972 resultados para Autonomous system
Resumo:
Embedded context management in resource-constrained devices (e.g. mobile phones, autonomous sensors or smart objects) imposes special requirements in terms of lightness for data modelling and reasoning. In this paper, we explore the state-of-the-art on data representation and reasoning tools for embedded mobile reasoning and propose a light inference system (LIS) aiming at simplifying embedded inference processes offering a set of functionalities to avoid redundancy in context management operations. The system is part of a service-oriented mobile software framework, conceived to facilitate the creation of context-aware applications?it decouples sensor data acquisition and context processing from the application logic. LIS, composed of several modules, encapsulates existing lightweight tools for ontology data management and rule-based reasoning, and it is ready to run on Java-enabled handheld devices. Data management and reasoning processes are designed to handle a general ontology that enables communication among framework components. Both the applications running on top of the framework and the framework components themselves can configure the rule and query sets in order to retrieve the information they need from LIS. In order to test LIS features in a real application scenario, an ?Activity Monitor? has been designed and implemented: a personal health-persuasive application that provides feedback on the user?s lifestyle, combining data from physical and virtual sensors. In this case of use, LIS is used to timely evaluate the user?s activity level, to decide on the convenience of triggering notifications and to determine the best interface or channel to deliver these context-aware alerts.
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This article presents the design, kinematic model and communication architecture for the multi-agent robotic system called SMART. The philosophy behind this kind of system requires the communication architecture to contemplate the concurrence of the whole system. The proposed architecture combines different communication technologies (TCP/IP and Bluetooth) under one protocol designed for the cooperation among agents and other elements of the system such as IP-Cameras, image processing library, path planner, user Interface, control block and data block. The high level control is modeled by Work-Flow Petri nets and implemented in C++ and C♯♯. Experimental results show the performance of the designed architecture.
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This paper proposes a novel robotic system that is able to move along the outside of the oil pipelines used in Electric Submersible Pumps (ESP) and Progressive Cavity Pumps (PCP) applications. This novel design, called RETOV, proposes a light weight structure robot that can be equipped with sensors to measure environmental variables avoiding damage in pumps and wells. In this paper, the main considerations and methodology of design and implementation are discussed. Finally, the first experimental results that show RETOV moving in vertical pipelines are analyzed.
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A fully integrated on-board electronic system that can perform in-situ structural health monitoring (SHM) of aircraft?s structures using specifically designed equipment for SHM based on guided wave ultrasonic method or Lamb waves? method is introduced. This equipment is called Phased Array Monitoring for Enhanced Life Assessment (PAMELA III) and is an essential part of overall PAMELA SHM? system. PAMELA III can generate any kind of excitation signals, acquire the response signals that propagate throughout the structure being tested, and perform the signal processing for damage detection directly on the structure without need to send the huge amount of raw signals but only the final SHM maps. It monitors the structure by means of an array of integrated Phased Array (PhA) transducers preferably bonded onto the host structure. The PAMELA III hardware for SHM mapping has been designed, built and subjected to laboratory tests, using aluminum and CFRP structures. The 12 channel system has been designed to be low weight (265 grams only), to have a small form factor, to be directly mounted above the integrated PhA transducers without need for cables and to be EMI protected so that the equipment can be taken on board an aircraft to perform required SHM analyses by use of embedded SHM algorithms. Moreover, the autonomous, automatic and on real-time working procedure makes it suitable for the avionic field, sending the corresponding alerts, maps and reports to external equipment.
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There is clear evidence that investment in intelligent transportation system technologies brings major social and economic benefits. Technological advances in the area of automatic systems in particular are becoming vital for the reduction of road deaths. We here describe our approach to automation of one the riskiest autonomous manœuvres involving vehicles – overtaking. The approach is based on a stereo vision system responsible for detecting any preceding vehicle and triggering the autonomous overtaking manœuvre. To this end, a fuzzy-logic based controller was developed to emulate how humans overtake. Its input is information from the vision system and from a positioning-based system consisting of a differential global positioning system (DGPS) and an inertial measurement unit (IMU). Its output is the generation of action on the vehicle’s actuators, i.e., the steering wheel and throttle and brake pedals. The system has been incorporated into a commercial Citroën car and tested on the private driving circuit at the facilities of our research center, CAR, with different preceding vehicles – a motorbike, car, and truck – with encouraging results.
Resumo:
ntelligent systems designed to reduce highway fatalities have been widely applied in the automotive sector in the last decade. Of all users of transport systems, pedestrians are the most vulnerable in crashes as they are unprotected. This paper deals with an autonomous intelligent emergency system designed to avoid collisions with pedestrians. The system consists of a fuzzy controller based on the time-to-collision estimate – obtained via a vision-based system – and the wheel-locking probability – obtained via the vehicle’s CAN bus – that generates a safe braking action. The system has been tested in a real car – a convertible Citroën C3 Pluriel – equipped with an automated electro-hydraulic braking system capable of working in parallel with the vehicle’s original braking circuit. The system is used as a last resort in the case that an unexpected pedestrian is in the lane and all the warnings have failed to produce a response from the driver.
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Security intrusions in large systems is a problem due to its lack of scalability with the current IDS-based approaches. This paper describes the RECLAMO project, where an architecture for an Automated Intrusion Response System (AIRS) is being proposed. This system will infer the most appropriate response for a given attack, taking into account the attack type, context information, and the trust and reputation of the reporting IDSs. RECLAMO is proposing a novel approach: diverting the attack to a specific honeynet that has been dynamically built based on the attack information. Among all components forming the RECLAMO's architecture, this paper is mainly focused on defining a trust and reputation management model, essential to recognize if IDSs are exposing an honest behavior in order to accept their alerts as true. Experimental results confirm that our model helps to encourage or discourage the launch of the automatic reaction process.
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This paper presents a vision based autonomous landing control approach for unmanned aerial vehicles (UAV). The 3D position of an unmanned helicopter is estimated based on the homographies estimated of a known landmark. The translation and altitude estimation of the helicopter against the helipad position are the only information that is used to control the longitudinal, lateral and descend speeds of the vehicle. The control system approach consists in three Fuzzy controllers to manage the speeds of each 3D axis of the aircraft s coordinate system. The 3D position estimation was proven rst, comparing it with the GPS + IMU data with very good results. The robust of the vision algorithm against occlusions was also tested. The excellent behavior of the Fuzzy control approach using the 3D position estimation based in homographies was proved in an outdoors test using a real unmanned helicopter.
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In this paper an on line self-tuned PID controller is proposed for the control of a car whose goal is to follow another one, at distances and speeds typical in urban traffic. The bestknown tuning mechanism is perhaps the MIT rule, due to its ease of implementation. However, as it is well known, this method does not guarantee the stability of the system, providing good results only for constant or slowly varying reference signals and in the absence of noise, which are unrealistic conditions. When the reference input varies with an appreciable rate or in presence of noise, eventually it could result in system instability. In this paper an alternative method is proposed that significantly improves the robustness of the system for varying inputs or in the presence of noise, as demonstrated by simulation.
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An important part of human intelligence, both historically and operationally, is our ability to communicate. We learn how to communicate, and maintain our communicative skills, in a society of communicators – a highly effective way to reach and maintain proficiency in this complex skill. Principles that might allow artificial agents to learn language this way are in completely known at present – the multi-dimensional nature of socio-communicative skills are beyond every machine learning framework so far proposed. Our work begins to address the challenge of proposing a way for observation-based machine learning of natural language and communication. Our framework can learn complex communicative skills with minimal up-front knowledge. The system learns by incrementally producing predictive models of causal relationships in observed data, guided by goal-inference and reasoning using forward-inverse models. We present results from two experiments where our S1 agent learns human communication by observing two humans interacting in a realtime TV-style interview, using multimodal communicative gesture and situated language to talk about recycling of various materials and objects. S1 can learn multimodal complex language and multimodal communicative acts, a vocabulary of 100 words forming natural sentences with relatively complex sentence structure, including manual deictic reference and anaphora. S1 is seeded only with high-level information about goals of the interviewer and interviewee, and a small ontology; no grammar or other information is provided to S1 a priori. The agent learns the pragmatics, semantics, and syntax of complex utterances spoken and gestures from scratch, by observing the humans compare and contrast the cost and pollution related to recycling aluminum cans, glass bottles, newspaper, plastic, and wood. After 20 hours of observation S1 can perform an unscripted TV interview with a human, in the same style, without making mistakes.
Resumo:
La robótica ha evolucionado exponencialmente en las últimas décadas, permitiendo a los sistemas actuales realizar tareas sumamente complejas con gran precisión, fiabilidad y velocidad. Sin embargo, este desarrollo ha estado asociado a un mayor grado de especialización y particularización de las tecnologías implicadas, siendo estas muy eficientes en situaciones concretas y controladas, pero incapaces en entornos cambiantes, dinámicos y desestructurados. Por eso, el desarrollo de la robótica debe pasar por dotar a los sistemas de capacidad de adaptación a las circunstancias, de entendedimiento sobre los cambios observados y de flexibilidad a la hora de interactuar con el entorno. Estas son las caracteristicas propias de la interacción del ser humano con su entorno, las que le permiten sobrevivir y las que pueden proporcionar a un sistema inteligencia y capacidad suficientes para desenvolverse en un entorno real de forma autónoma e independiente. Esta adaptabilidad es especialmente importante en el manejo de riesgos e incetidumbres, puesto que es el mecanismo que permite contextualizar y evaluar las amenazas para proporcionar una respuesta adecuada. Así, por ejemplo, cuando una persona se mueve e interactua con su entorno, no evalúa los obstáculos en función de su posición, velocidad o dinámica (como hacen los sistemas robóticos tradicionales), sino mediante la estimación del riesgo potencial que estos elementos suponen para la persona. Esta evaluación se consigue combinando dos procesos psicofísicos del ser humano: por un lado, la percepción humana analiza los elementos relevantes del entorno, tratando de entender su naturaleza a partir de patrones de comportamiento, propiedades asociadas u otros rasgos distintivos. Por otro lado, como segundo nivel de evaluación, el entendimiento de esta naturaleza permite al ser humano conocer/estimar la relación de los elementos con él mismo, así como sus implicaciones en cuanto a nivel de riesgo se refiere. El establecimiento de estas relaciones semánticas -llamado cognición- es la única forma de definir el nivel de riesgo de manera absoluta y de generar una respuesta adecuada al mismo. No necesariamente proporcional, sino coherente con el riesgo al que se enfrenta. La investigación que presenta esta tesis describe el trabajo realizado para trasladar esta metodología de análisis y funcionamiento a la robótica. Este se ha centrado especialmente en la nevegación de los robots aéreos, diseñando e implementado procedimientos de inspiración humana para garantizar la seguridad de la misma. Para ello se han estudiado y evaluado los mecanismos de percepción, cognición y reacción humanas en relación al manejo de riesgos. También se ha analizado como los estímulos son capturados, procesados y transformados por condicionantes psicológicos, sociológicos y antropológicos de los seres humanos. Finalmente, también se ha analizado como estos factores motivan y descandenan las reacciones humanas frente a los peligros. Como resultado de este estudio, todos estos procesos, comportamientos y condicionantes de la conducta humana se han reproducido en un framework que se ha estructurado basadandose en factores análogos. Este emplea el conocimiento obtenido experimentalmente en forma de algoritmos, técnicas y estrategias, emulando el comportamiento humano en las mismas circunstancias. Diseñado, implementeado y validado tanto en simulación como con datos reales, este framework propone una manera innovadora -tanto en metodología como en procedimiento- de entender y reaccionar frente a las amenazas potenciales de una misión robótica. ABSTRACT Robotics has undergone a great revolution in the last decades. Nowadays this technology is able to perform really complex tasks with a high degree of accuracy and speed, however this is only true in precisely defined situations with fully controlled variables. Since the real world is dynamic, changing and unstructured, flexible and non context-dependent systems are required. The ability to understand situations, acknowledge changes and balance reactions is required by robots to successfully interact with their surroundings in a fully autonomous fashion. In fact, it is those very processes that define human interactions with the environment. Social relationships, driving or risk/incertitude management... in all these activities and systems, context understanding and adaptability are what allow human beings to survive: contrarily to the traditional robotics, people do not evaluate obstacles according to their position but according to the potential risk their presence imply. In this sense, human perception looks for information which goes beyond location, speed and dynamics (the usual data used in traditional obstacle avoidance systems). Specific features in the behaviour of a particular element allows the understanding of that element’s nature and therefore the comprehension of the risk posed by it. This process defines the second main difference between traditional obstacle avoidance systems and human behaviour: the ability to understand a situation/scenario allows to get to know the implications of the elements and their relationship with the observer. Establishing these semantic relationships -named cognition- is the only way to estimate the actual danger level of an element. Furthermore, only the application of this knowledge allows the generation of coherent, suitable and adjusted responses to deal with any risk faced. The research presented in this thesis summarizes the work done towards translating these human cognitive/reasoning procedures to the field of robotics. More specifically, the work done has been focused on employing human-based methodologies to enable aerial robots to navigate safely. To this effect, human perception, cognition and reaction processes concerning risk management have been experimentally studied; as well as the acquisition and processing of stimuli. How psychological, sociological and anthropological factors modify, balance and give shape to those stimuli has been researched. And finally, the way in which these factors motivate the human behaviour according to different mindsets and priorities has been established. This associative workflow has been reproduced by establishing an equivalent structure and defining similar factors and sources. Besides, all the knowledge obtained experimentally has been applied in the form of algorithms, techniques and strategies which emulate the analogous human behaviours. As a result, a framework capable of understanding and reacting in response to stimuli has been implemented and validated.
Resumo:
In this paper we tackle the problem of landing a helicopter autonomously on a ship deck, using as the main sensor, an on-board colour camera. To create a test-bed, we first adequately simulate the movement of a ship landing platform on the Sea, for different Sea States, for different ships, randomly and realistically enough. We use a commercial parallel robot to get this movement. Once we had this, we developed an accurate and robust computer vision system to measure the pose of the helipad with respect to the on-board camera. To deal with the noise and the possible fails of the computer vision, a state estimator was created. With all of this, we are now able to develop and test a controller that closes the loop and finish the autonomous landing task.
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Stream-mining approach is defined as a set of cutting-edge techniques designed to process streams of data in real time, in order to extract knowledge. In the particular case of classification, stream-mining has to adapt its behaviour to the volatile underlying data distributions, what has been called concept drift. Moreover, it is important to note that concept drift may lead to situations where predictive models become invalid and have therefore to be updated to represent the actual concepts that data poses. In this context, there is a specific type of concept drift, known as recurrent concept drift, where the concepts represented by data have already appeared in the past. In those cases the learning process could be saved or at least minimized by applying a previously trained model. This could be extremely useful in ubiquitous environments that are characterized by the existence of resource constrained devices. To deal with the aforementioned scenario, meta-models can be used in the process of enhancing the drift detection mechanisms used by data stream algorithms, by representing and predicting when the change will occur. There are some real-world situations where a concept reappears, as in the case of intrusion detection systems (IDS), where the same incidents or an adaptation of them usually reappear over time. In these environments the early prediction of drift by means of a better knowledge of past models can help to anticipate to the change, thus improving efficiency of the model regarding the training instances needed. By means of using meta-models as a recurrent drift detection mechanism, the ability to share concepts representations among different data mining processes is open. That kind of exchanges could improve the accuracy of the resultant local model as such model may benefit from patterns similar to the local concept that were observed in other scenarios, but not yet locally. This would also improve the efficiency of training instances used during the classification process, as long as the exchange of models would aid in the application of already trained recurrent models, that have been previously seen by any of the collaborative devices. Which it is to say that the scope of recurrence detection and representation is broaden. In fact the detection, representation and exchange of concept drift patterns would be extremely useful for the law enforcement activities fighting against cyber crime. Being the information exchange one of the main pillars of cooperation, national units would benefit from the experience and knowledge gained by third parties. Moreover, in the specific scope of critical infrastructures protection it is crucial to count with information exchange mechanisms, both from a strategical and technical scope. The exchange of concept drift detection schemes in cyber security environments would aid in the process of preventing, detecting and effectively responding to threads in cyber space. Furthermore, as a complement of meta-models, a mechanism to assess the similarity between classification models is also needed when dealing with recurrent concepts. In this context, when reusing a previously trained model a rough comparison between concepts is usually made, applying boolean logic. The introduction of fuzzy logic comparisons between models could lead to a better efficient reuse of previously seen concepts, by applying not just equal models, but also similar ones. This work faces the aforementioned open issues by means of: the MMPRec system, that integrates a meta-model mechanism and a fuzzy similarity function; a collaborative environment to share meta-models between different devices; a recurrent drift generator that allows to test the usefulness of recurrent drift systems, as it is the case of MMPRec. Moreover, this thesis presents an experimental validation of the proposed contributions using synthetic and real datasets.
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Esta tesis doctoral se enmarca dentro del campo de los sistemas embebidos reconfigurables, redes de sensores inalámbricas para aplicaciones de altas prestaciones, y computación distribuida. El documento se centra en el estudio de alternativas de procesamiento para sistemas embebidos autónomos distribuidos de altas prestaciones (por sus siglas en inglés, High-Performance Autonomous Distributed Systems (HPADS)), así como su evolución hacia el procesamiento de alta resolución. El estudio se ha llevado a cabo tanto a nivel de plataforma como a nivel de las arquitecturas de procesamiento dentro de la plataforma con el objetivo de optimizar aspectos tan relevantes como la eficiencia energética, la capacidad de cómputo y la tolerancia a fallos del sistema. Los HPADS son sistemas realimentados, normalmente formados por elementos distribuidos conectados o no en red, con cierta capacidad de adaptación, y con inteligencia suficiente para llevar a cabo labores de prognosis y/o autoevaluación. Esta clase de sistemas suele formar parte de sistemas más complejos llamados sistemas ciber-físicos (por sus siglas en inglés, Cyber-Physical Systems (CPSs)). Los CPSs cubren un espectro enorme de aplicaciones, yendo desde aplicaciones médicas, fabricación, o aplicaciones aeroespaciales, entre otras muchas. Para el diseño de este tipo de sistemas, aspectos tales como la confiabilidad, la definición de modelos de computación, o el uso de metodologías y/o herramientas que faciliten el incremento de la escalabilidad y de la gestión de la complejidad, son fundamentales. La primera parte de esta tesis doctoral se centra en el estudio de aquellas plataformas existentes en el estado del arte que por sus características pueden ser aplicables en el campo de los CPSs, así como en la propuesta de un nuevo diseño de plataforma de altas prestaciones que se ajuste mejor a los nuevos y más exigentes requisitos de las nuevas aplicaciones. Esta primera parte incluye descripción, implementación y validación de la plataforma propuesta, así como conclusiones sobre su usabilidad y sus limitaciones. Los principales objetivos para el diseño de la plataforma propuesta se enumeran a continuación: • Estudiar la viabilidad del uso de una FPGA basada en RAM como principal procesador de la plataforma en cuanto a consumo energético y capacidad de cómputo. • Propuesta de técnicas de gestión del consumo de energía en cada etapa del perfil de trabajo de la plataforma. •Propuestas para la inclusión de reconfiguración dinámica y parcial de la FPGA (por sus siglas en inglés, Dynamic Partial Reconfiguration (DPR)) de forma que sea posible cambiar ciertas partes del sistema en tiempo de ejecución y sin necesidad de interrumpir al resto de las partes. Evaluar su aplicabilidad en el caso de HPADS. Las nuevas aplicaciones y nuevos escenarios a los que se enfrentan los CPSs, imponen nuevos requisitos en cuanto al ancho de banda necesario para el procesamiento de los datos, así como en la adquisición y comunicación de los mismos, además de un claro incremento en la complejidad de los algoritmos empleados. Para poder cumplir con estos nuevos requisitos, las plataformas están migrando desde sistemas tradicionales uni-procesador de 8 bits, a sistemas híbridos hardware-software que incluyen varios procesadores, o varios procesadores y lógica programable. Entre estas nuevas arquitecturas, las FPGAs y los sistemas en chip (por sus siglas en inglés, System on Chip (SoC)) que incluyen procesadores embebidos y lógica programable, proporcionan soluciones con muy buenos resultados en cuanto a consumo energético, precio, capacidad de cómputo y flexibilidad. Estos buenos resultados son aún mejores cuando las aplicaciones tienen altos requisitos de cómputo y cuando las condiciones de trabajo son muy susceptibles de cambiar en tiempo real. La plataforma propuesta en esta tesis doctoral se ha denominado HiReCookie. La arquitectura incluye una FPGA basada en RAM como único procesador, así como un diseño compatible con la plataforma para redes de sensores inalámbricas desarrollada en el Centro de Electrónica Industrial de la Universidad Politécnica de Madrid (CEI-UPM) conocida como Cookies. Esta FPGA, modelo Spartan-6 LX150, era, en el momento de inicio de este trabajo, la mejor opción en cuanto a consumo y cantidad de recursos integrados, cuando además, permite el uso de reconfiguración dinámica y parcial. Es importante resaltar que aunque los valores de consumo son los mínimos para esta familia de componentes, la potencia instantánea consumida sigue siendo muy alta para aquellos sistemas que han de trabajar distribuidos, de forma autónoma, y en la mayoría de los casos alimentados por baterías. Por esta razón, es necesario incluir en el diseño estrategias de ahorro energético para incrementar la usabilidad y el tiempo de vida de la plataforma. La primera estrategia implementada consiste en dividir la plataforma en distintas islas de alimentación de forma que sólo aquellos elementos que sean estrictamente necesarios permanecerán alimentados, cuando el resto puede estar completamente apagado. De esta forma es posible combinar distintos modos de operación y así optimizar enormemente el consumo de energía. El hecho de apagar la FPGA para ahora energía durante los periodos de inactividad, supone la pérdida de la configuración, puesto que la memoria de configuración es una memoria volátil. Para reducir el impacto en el consumo y en el tiempo que supone la reconfiguración total de la plataforma una vez encendida, en este trabajo, se incluye una técnica para la compresión del archivo de configuración de la FPGA, de forma que se consiga una reducción del tiempo de configuración y por ende de la energía consumida. Aunque varios de los requisitos de diseño pueden satisfacerse con el diseño de la plataforma HiReCookie, es necesario seguir optimizando diversos parámetros tales como el consumo energético, la tolerancia a fallos y la capacidad de procesamiento. Esto sólo es posible explotando todas las posibilidades ofrecidas por la arquitectura de procesamiento en la FPGA. Por lo tanto, la segunda parte de esta tesis doctoral está centrada en el diseño de una arquitectura reconfigurable denominada ARTICo3 (Arquitectura Reconfigurable para el Tratamiento Inteligente de Cómputo, Confiabilidad y Consumo de energía) para la mejora de estos parámetros por medio de un uso dinámico de recursos. ARTICo3 es una arquitectura de procesamiento para FPGAs basadas en RAM, con comunicación tipo bus, preparada para dar soporte para la gestión dinámica de los recursos internos de la FPGA en tiempo de ejecución gracias a la inclusión de reconfiguración dinámica y parcial. Gracias a esta capacidad de reconfiguración parcial, es posible adaptar los niveles de capacidad de procesamiento, energía consumida o tolerancia a fallos para responder a las demandas de la aplicación, entorno, o métricas internas del dispositivo mediante la adaptación del número de recursos asignados para cada tarea. Durante esta segunda parte de la tesis se detallan el diseño de la arquitectura, su implementación en la plataforma HiReCookie, así como en otra familia de FPGAs, y su validación por medio de diferentes pruebas y demostraciones. Los principales objetivos que se plantean la arquitectura son los siguientes: • Proponer una metodología basada en un enfoque multi-hilo, como las propuestas por CUDA (por sus siglas en inglés, Compute Unified Device Architecture) u Open CL, en la cual distintos kernels, o unidades de ejecución, se ejecuten en un numero variable de aceleradores hardware sin necesidad de cambios en el código de aplicación. • Proponer un diseño y proporcionar una arquitectura en la que las condiciones de trabajo cambien de forma dinámica dependiendo bien de parámetros externos o bien de parámetros que indiquen el estado de la plataforma. Estos cambios en el punto de trabajo de la arquitectura serán posibles gracias a la reconfiguración dinámica y parcial de aceleradores hardware en tiempo real. • Explotar las posibilidades de procesamiento concurrente, incluso en una arquitectura basada en bus, por medio de la optimización de las transacciones en ráfaga de datos hacia los aceleradores. •Aprovechar las ventajas ofrecidas por la aceleración lograda por módulos puramente hardware para conseguir una mejor eficiencia energética. • Ser capaces de cambiar los niveles de redundancia de hardware de forma dinámica según las necesidades del sistema en tiempo real y sin cambios para el código de aplicación. • Proponer una capa de abstracción entre el código de aplicación y el uso dinámico de los recursos de la FPGA. El diseño en FPGAs permite la utilización de módulos hardware específicamente creados para una aplicación concreta. De esta forma es posible obtener rendimientos mucho mayores que en el caso de las arquitecturas de propósito general. Además, algunas FPGAs permiten la reconfiguración dinámica y parcial de ciertas partes de su lógica en tiempo de ejecución, lo cual dota al diseño de una gran flexibilidad. Los fabricantes de FPGAs ofrecen arquitecturas predefinidas con la posibilidad de añadir bloques prediseñados y poder formar sistemas en chip de una forma más o menos directa. Sin embargo, la forma en la que estos módulos hardware están organizados dentro de la arquitectura interna ya sea estática o dinámicamente, o la forma en la que la información se intercambia entre ellos, influye enormemente en la capacidad de cómputo y eficiencia energética del sistema. De la misma forma, la capacidad de cargar módulos hardware bajo demanda, permite añadir bloques redundantes que permitan aumentar el nivel de tolerancia a fallos de los sistemas. Sin embargo, la complejidad ligada al diseño de bloques hardware dedicados no debe ser subestimada. Es necesario tener en cuenta que el diseño de un bloque hardware no es sólo su propio diseño, sino también el diseño de sus interfaces, y en algunos casos de los drivers software para su manejo. Además, al añadir más bloques, el espacio de diseño se hace más complejo, y su programación más difícil. Aunque la mayoría de los fabricantes ofrecen interfaces predefinidas, IPs (por sus siglas en inglés, Intelectual Property) comerciales y plantillas para ayudar al diseño de los sistemas, para ser capaces de explotar las posibilidades reales del sistema, es necesario construir arquitecturas sobre las ya establecidas para facilitar el uso del paralelismo, la redundancia, y proporcionar un entorno que soporte la gestión dinámica de los recursos. Para proporcionar este tipo de soporte, ARTICo3 trabaja con un espacio de soluciones formado por tres ejes fundamentales: computación, consumo energético y confiabilidad. De esta forma, cada punto de trabajo se obtiene como una solución de compromiso entre estos tres parámetros. Mediante el uso de la reconfiguración dinámica y parcial y una mejora en la transmisión de los datos entre la memoria principal y los aceleradores, es posible dedicar un número variable de recursos en el tiempo para cada tarea, lo que hace que los recursos internos de la FPGA sean virtualmente ilimitados. Este variación en el tiempo del número de recursos por tarea se puede usar bien para incrementar el nivel de paralelismo, y por ende de aceleración, o bien para aumentar la redundancia, y por lo tanto el nivel de tolerancia a fallos. Al mismo tiempo, usar un numero óptimo de recursos para una tarea mejora el consumo energético ya que bien es posible disminuir la potencia instantánea consumida, o bien el tiempo de procesamiento. Con el objetivo de mantener los niveles de complejidad dentro de unos límites lógicos, es importante que los cambios realizados en el hardware sean totalmente transparentes para el código de aplicación. A este respecto, se incluyen distintos niveles de transparencia: • Transparencia a la escalabilidad: los recursos usados por una misma tarea pueden ser modificados sin que el código de aplicación sufra ningún cambio. • Transparencia al rendimiento: el sistema aumentara su rendimiento cuando la carga de trabajo aumente, sin cambios en el código de aplicación. • Transparencia a la replicación: es posible usar múltiples instancias de un mismo módulo bien para añadir redundancia o bien para incrementar la capacidad de procesamiento. Todo ello sin que el código de aplicación cambie. • Transparencia a la posición: la posición física de los módulos hardware es arbitraria para su direccionamiento desde el código de aplicación. • Transparencia a los fallos: si existe un fallo en un módulo hardware, gracias a la redundancia, el código de aplicación tomará directamente el resultado correcto. • Transparencia a la concurrencia: el hecho de que una tarea sea realizada por más o menos bloques es transparente para el código que la invoca. Por lo tanto, esta tesis doctoral contribuye en dos líneas diferentes. En primer lugar, con el diseño de la plataforma HiReCookie y en segundo lugar con el diseño de la arquitectura ARTICo3. Las principales contribuciones de esta tesis se resumen a continuación. • Arquitectura de la HiReCookie incluyendo: o Compatibilidad con la plataforma Cookies para incrementar las capacidades de esta. o División de la arquitectura en distintas islas de alimentación. o Implementación de los diversos modos de bajo consumo y políticas de despertado del nodo. o Creación de un archivo de configuración de la FPGA comprimido para reducir el tiempo y el consumo de la configuración inicial. • Diseño de la arquitectura reconfigurable para FPGAs basadas en RAM ARTICo3: o Modelo de computación y modos de ejecución inspirados en el modelo de CUDA pero basados en hardware reconfigurable con un número variable de bloques de hilos por cada unidad de ejecución. o Estructura para optimizar las transacciones de datos en ráfaga proporcionando datos en cascada o en paralelo a los distinto módulos incluyendo un proceso de votado por mayoría y operaciones de reducción. o Capa de abstracción entre el procesador principal que incluye el código de aplicación y los recursos asignados para las diferentes tareas. o Arquitectura de los módulos hardware reconfigurables para mantener la escalabilidad añadiendo una la interfaz para las nuevas funcionalidades con un simple acceso a una memoria RAM interna. o Caracterización online de las tareas para proporcionar información a un módulo de gestión de recursos para mejorar la operación en términos de energía y procesamiento cuando además se opera entre distintos nieles de tolerancia a fallos. El documento está dividido en dos partes principales formando un total de cinco capítulos. En primer lugar, después de motivar la necesidad de nuevas plataformas para cubrir las nuevas aplicaciones, se detalla el diseño de la plataforma HiReCookie, sus partes, las posibilidades para bajar el consumo energético y se muestran casos de uso de la plataforma así como pruebas de validación del diseño. La segunda parte del documento describe la arquitectura reconfigurable, su implementación en varias FPGAs, y pruebas de validación en términos de capacidad de procesamiento y consumo energético, incluyendo cómo estos aspectos se ven afectados por el nivel de tolerancia a fallos elegido. Los capítulos a lo largo del documento son los siguientes: El capítulo 1 analiza los principales objetivos, motivación y aspectos teóricos necesarios para seguir el resto del documento. El capítulo 2 está centrado en el diseño de la plataforma HiReCookie y sus posibilidades para disminuir el consumo de energía. El capítulo 3 describe la arquitectura reconfigurable ARTICo3. El capítulo 4 se centra en las pruebas de validación de la arquitectura usando la plataforma HiReCookie para la mayoría de los tests. Un ejemplo de aplicación es mostrado para analizar el funcionamiento de la arquitectura. El capítulo 5 concluye esta tesis doctoral comentando las conclusiones obtenidas, las contribuciones originales del trabajo y resultados y líneas futuras. ABSTRACT This PhD Thesis is framed within the field of dynamically reconfigurable embedded systems, advanced sensor networks and distributed computing. The document is centred on the study of processing solutions for high-performance autonomous distributed systems (HPADS) as well as their evolution towards High performance Computing (HPC) systems. The approach of the study is focused on both platform and processor levels to optimise critical aspects such as computing performance, energy efficiency and fault tolerance. HPADS are considered feedback systems, normally networked and/or distributed, with real-time adaptive and predictive functionality. These systems, as part of more complex systems known as Cyber-Physical Systems (CPSs), can be applied in a wide range of fields such as military, health care, manufacturing, aerospace, etc. For the design of HPADS, high levels of dependability, the definition of suitable models of computation, and the use of methodologies and tools to support scalability and complexity management, are required. The first part of the document studies the different possibilities at platform design level in the state of the art, together with description, development and validation tests of the platform proposed in this work to cope with the previously mentioned requirements. The main objectives targeted by this platform design are the following: • Study the feasibility of using SRAM-based FPGAs as the main processor of the platform in terms of energy consumption and performance for high demanding applications. • Analyse and propose energy management techniques to reduce energy consumption in every stage of the working profile of the platform. • Provide a solution with dynamic partial and wireless remote HW reconfiguration (DPR) to be able to change certain parts of the FPGA design at run time and on demand without interrupting the rest of the system. • Demonstrate the applicability of the platform in different test-bench applications. In order to select the best approach for the platform design in terms of processing alternatives, a study of the evolution of the state-of-the-art platforms is required to analyse how different architectures cope with new more demanding applications and scenarios: security, mixed-critical systems for aerospace, multimedia applications, or military environments, among others. In all these scenarios, important changes in the required processing bandwidth or the complexity of the algorithms used are provoking the migration of the platforms from single microprocessor architectures to multiprocessing and heterogeneous solutions with more instant power consumption but higher energy efficiency. Within these solutions, FPGAs and Systems on Chip including FPGA fabric and dedicated hard processors, offer a good trade of among flexibility, processing performance, energy consumption and price, when they are used in demanding applications where working conditions are very likely to vary over time and high complex algorithms are required. The platform architecture proposed in this PhD Thesis is called HiReCookie. It includes an SRAM-based FPGA as the main and only processing unit. The FPGA selected, the Xilinx Spartan-6 LX150, was at the beginning of this work the best choice in terms of amount of resources and power. Although, the power levels are the lowest of these kind of devices, they can be still very high for distributed systems that normally work powered by batteries. For that reason, it is necessary to include different energy saving possibilities to increase the usability of the platform. In order to reduce energy consumption, the platform architecture is divided into different power islands so that only those parts of the systems that are strictly needed are powered on, while the rest of the islands can be completely switched off. This allows a combination of different low power modes to decrease energy. In addition, one of the most important handicaps of SRAM-based FPGAs is that they are not alive at power up. Therefore, recovering the system from a switch-off state requires to reload the FPGA configuration from a non-volatile memory device. For that reason, this PhD Thesis also proposes a methodology to compress the FPGA configuration file in order to reduce time and energy during the initial configuration process. Although some of the requirements for the design of HPADS are already covered by the design of the HiReCookie platform, it is necessary to continue improving energy efficiency, computing performance and fault tolerance. This is only possible by exploiting all the opportunities provided by the processing architectures configured inside the FPGA. Therefore, the second part of the thesis details the design of the so called ARTICo3 FPGA architecture to enhance the already intrinsic capabilities of the FPGA. ARTICo3 is a DPR-capable bus-based virtual architecture for multiple HW acceleration in SRAM-based FPGAs. The architecture provides support for dynamic resource management in real time. In this way, by using DPR, it will be possible to change the levels of computing performance, energy consumption and fault tolerance on demand by increasing or decreasing the amount of resources used by the different tasks. Apart from the detailed design of the architecture and its implementation in different FPGA devices, different validation tests and comparisons are also shown. The main objectives targeted by this FPGA architecture are listed as follows: • Provide a method based on a multithread approach such as those offered by CUDA (Compute Unified Device Architecture) or OpenCL kernel executions, where kernels are executed in a variable number of HW accelerators without requiring application code changes. • Provide an architecture to dynamically adapt working points according to either self-measured or external parameters in terms of energy consumption, fault tolerance and computing performance. Taking advantage of DPR capabilities, the architecture must provide support for a dynamic use of resources in real time. • Exploit concurrent processing capabilities in a standard bus-based system by optimizing data transactions to and from HW accelerators. • Measure the advantage of HW acceleration as a technique to boost performance to improve processing times and save energy by reducing active times for distributed embedded systems. • Dynamically change the levels of HW redundancy to adapt fault tolerance in real time. • Provide HW abstraction from SW application design. FPGAs give the possibility of designing specific HW blocks for every required task to optimise performance while some of them include the possibility of including DPR. Apart from the possibilities provided by manufacturers, the way these HW modules are organised, addressed and multiplexed in area and time can improve computing performance and energy consumption. At the same time, fault tolerance and security techniques can also be dynamically included using DPR. However, the inherent complexity of designing new HW modules for every application is not negligible. It does not only consist of the HW description, but also the design of drivers and interfaces with the rest of the system, while the design space is widened and more complex to define and program. Even though the tools provided by the majority of manufacturers already include predefined bus interfaces, commercial IPs, and templates to ease application prototyping, it is necessary to improve these capabilities. By adding new architectures on top of them, it is possible to take advantage of parallelization and HW redundancy while providing a framework to ease the use of dynamic resource management. ARTICo3 works within a solution space where working points change at run time in a 3D space defined by three different axes: Computation, Consumption, and Fault Tolerance. Therefore, every working point is found as a trade-off solution among these three axes. By means of DPR, different accelerators can be multiplexed so that the amount of available resources for any application is virtually unlimited. Taking advantage of DPR capabilities and a novel way of transmitting data to the reconfigurable HW accelerators, it is possible to dedicate a dynamically-changing number of resources for a given task in order to either boost computing speed or adding HW redundancy and a voting process to increase fault-tolerance levels. At the same time, using an optimised amount of resources for a given task reduces energy consumption by reducing instant power or computing time. In order to keep level complexity under certain limits, it is important that HW changes are transparent for the application code. Therefore, different levels of transparency are targeted by the system: • Scalability transparency: a task must be able to expand its resources without changing the system structure or application algorithms. • Performance transparency: the system must reconfigure itself as load changes. • Replication transparency: multiple instances of the same task are loaded to increase reliability and performance. • Location transparency: resources are accessed with no knowledge of their location by the application code. • Failure transparency: task must be completed despite a failure in some components. • Concurrency transparency: different tasks will work in a concurrent way transparent to the application code. Therefore, as it can be seen, the Thesis is contributing in two different ways. First with the design of the HiReCookie platform and, second with the design of the ARTICo3 architecture. The main contributions of this PhD Thesis are then listed below: • Architecture of the HiReCookie platform including: o Compatibility of the processing layer for high performance applications with the Cookies Wireless Sensor Network platform for fast prototyping and implementation. o A division of the architecture in power islands. o All the different low-power modes. o The creation of the partial-initial bitstream together with the wake-up policies of the node. • The design of the reconfigurable architecture for SRAM FPGAs: ARTICo3: o A model of computation and execution modes inspired in CUDA but based on reconfigurable HW with a dynamic number of thread blocks per kernel. o A structure to optimise burst data transactions providing coalesced or parallel data to HW accelerators, parallel voting process and reduction operation. o The abstraction provided to the host processor with respect to the operation of the kernels in terms of the number of replicas, modes of operation, location in the reconfigurable area and addressing. o The architecture of the modules representing the thread blocks to make the system scalable by adding functional units only adding an access to a BRAM port. o The online characterization of the kernels to provide information to a scheduler or resource manager in terms of energy consumption and processing time when changing among different fault-tolerance levels, as well as if a kernel is expected to work in the memory-bounded or computing-bounded areas. The document of the Thesis is divided into two main parts with a total of five chapters. First, after motivating the need for new platforms to cover new more demanding applications, the design of the HiReCookie platform, its parts and several partial tests are detailed. The design of the platform alone does not cover all the needs of these applications. Therefore, the second part describes the architecture inside the FPGA, called ARTICo3, proposed in this PhD Thesis. The architecture and its implementation are tested in terms of energy consumption and computing performance showing different possibilities to improve fault tolerance and how this impact in energy and time of processing. Chapter 1 shows the main goals of this PhD Thesis and the technology background required to follow the rest of the document. Chapter 2 shows all the details about the design of the FPGA-based platform HiReCookie. Chapter 3 describes the ARTICo3 architecture. Chapter 4 is focused on the validation tests of the ARTICo3 architecture. An application for proof of concept is explained where typical kernels related to image processing and encryption algorithms are used. Further experimental analyses are performed using these kernels. Chapter 5 concludes the document analysing conclusions, comments about the contributions of the work, and some possible future lines for the work.
Resumo:
The emergence of new horizons in the field of travel assistant management leads to the development of cutting-edge systems focused on improving the existing ones. Moreover, new opportunities are being also presented since systems trend to be more reliable and autonomous. In this paper, a self-learning embedded system for object identification based on adaptive-cooperative dynamic approaches is presented for intelligent sensor’s infrastructures. The proposed system is able to detect and identify moving objects using a dynamic decision tree. Consequently, it combines machine learning algorithms and cooperative strategies in order to make the system more adaptive to changing environments. Therefore, the proposed system may be very useful for many applications like shadow tolls since several types of vehicles may be distinguished, parking optimization systems, improved traffic conditions systems, etc.