1,574 research outputs found

    A Review of Fault Diagnosing Methods in Power Transmission Systems

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    Transient stability is important in power systems. Disturbances like faults need to be segregated to restore transient stability. A comprehensive review of fault diagnosing methods in the power transmission system is presented in this paper. Typically, voltage and current samples are deployed for analysis. Three tasks/topics; fault detection, classification, and location are presented separately to convey a more logical and comprehensive understanding of the concepts. Feature extractions, transformations with dimensionality reduction methods are discussed. Fault classification and location techniques largely use artificial intelligence (AI) and signal processing methods. After the discussion of overall methods and concepts, advancements and future aspects are discussed. Generalized strengths and weaknesses of different AI and machine learning-based algorithms are assessed. A comparison of different fault detection, classification, and location methods is also presented considering features, inputs, complexity, system used and results. This paper may serve as a guideline for the researchers to understand different methods and techniques in this field

    Performance Review of Selected Topology-Aware Routing Strategies for Clustering Sensor Networks

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    In this paper, cluster-based routing (CBR) protocols for addressing issues pertinent to energy consumption, network lifespan, resource allocation and network coverage are reviewed. The paper presents an indepth  performance analysis and critical review of selected CBR algorithms. The study is domain-specific and simulation-based with emphasis on the tripartite trade-off between coverage, connectivity and lifespan. The rigorous statistical analysis of selected CBR schemes was also presented. Network simulation was conducted with Java-based Atarraya discrete-event simulation toolkit while statistical analysis was carried out using MATLAB. It was observed that the Periodic, Event-Driven and Query-Based Routing (PEQ) schemes performs better than Low-Energy Adaptive Clustering Hierarchy (LEACH), Threshold-Sensitive Energy-Efficient Sensor Network (TEEN) and Geographic Adaptive Fidelity (GAF) in terms of network lifespan, energy consumption and network throughput.Keywords: Wireless sensor network, Hierarchical topologies, Cluster-based routing, Statistical analysis, Network simulatio

    Forwarding fault detection in wireless community networks

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    Wireless community networks (WCN) are specially vulnerable to routing forwarding failures because of their intrinsic characteristics: use of inexpensive hardware that can be easily accessed; managed in a decentralized way, sometimes by non-expert administrators, and open to everyone; making it prone to hardware failures, misconfigurations and malicious attacks. To increase routing robustness in WCN, we propose a detection mechanism to detect faulty routers, so that the problem can be tackled. Forwarding fault detection can be explained as a 4 steps process: first, there is the need of monitoring and summarizing the traffic observed; then, the traffic summaries are shared among peers, so that evaluation of a router's behavior can be done by analyzing all the relevant traffic summaries; finally, once the faulty nodes have been detected a response mechanism is triggered to solve the issue. The contributions of this thesis focus on the first three steps of this process, providing solutions adapted to Wireless Community Networks that can be deployed without the need of modifying its current network stack. First, we study and characterize the distribution of the error of sketches, a traffic summary function that is resilient to packet dropping, modification and creation and provides better estimations than sampling. We define a random process to describe the estimation for each sketch type, which allows us to provide tighter bounds on the sketch accuracy and choose the size of the sketch more accurately for a set of given requirements on the estimation accuracy. Second, we propose KDet, a traffic summary dissemination and detection protocol that, unlike previous solutions, is resilient to collusion and false accusation without the need of knowing a packet's path. Finally, we consider the case of nodes with unsynchronized clocks and we propose a traffic validation mechanism based on sketches that is capable of discerning between faulty and non-faulty nodes even when the traffic summaries are misaligned, i.e. they refer to slightly different intervals of time.Las redes comunitarias son especialmente vulnerables a errores en la retransmisión de paquetes de red, puesto que están formadas por equipos de gama baja, que pueden ser fácilmente accedidos por extraños; están gestionados de manera distribuida y no siempre por expertos, y además están abiertas a todo el mundo; con lo que de manera habitual presentan errores de hardware o configuración y son sensibles a ataques maliciosos. Para mejorar la robustez en el enrutamiento en estas redes, proponemos el uso de un mecanismo de detección de routers defectuosos, para así poder corregir el problema. La detección de fallos de enrutamiento se puede explicar como un proceso de 4 pasos: el primero es monitorizar el tráfico existente, manteniendo desde cada punto de observación un resumen sobre el tráfico observado; después, estos resumenes se comparten entre los diferentes nodos, para que podamos llevar a cabo el siguiente paso: la evaluación del comportamiento de cada nodo. Finalmente, una vez hemos detectado los nodos maliciosos o que fallan, debemos actuar con un mecanismo de respuesta que corrija el problema. Esta tesis se concentra en los tres primeros pasos, y proponemos una solución para cada uno de ellos que se adapta al contexto de las redes comunitarias, de tal manera que se puede desplegar en ellas sin la necesidad de modificar los sistemas y protocolos de red ya existentes. Respecto a los resumenes de tráfico, presentamos un estudio y caracterización de la distribución de error de los sketches, una estructura de datos que es capaz de resumir flujos de tráfico resistente a la pérdida, manipulación y creación de paquetes y que además tiene mejor resolución que el muestreo. Para cada tipo de sketch, definimos una función de distribución que caracteriza el error cometido, de esta manera somos capaces de determinar con más precisión el tamaño del sketch requerido bajo unos requisitos de falsos positivos y negativos. Después proponemos KDet, un protocolo de diseminación de resumenes de tráfico y detección de nodos erróneos que, a diferencia de protocolos propuestos anteriormente, no require conocer el camino de cada paquete y es resistente a la confabulación de nodos maliciosos. Por último, consideramos el caso de nodos con relojes desincronizados, y proponemos un mecanismo de detección basado en sketches, capaz de discernir entre los nodos erróneos y correctos, aún a pesar del desalineamiento de los sketches (es decir, a pesar del que estos se refieran a momentos de tiempo ligeramente diferentes)

    A Feed forward Neural Network MPPT Control Strategy Applied to a Modified Cuk Converter

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    This paper presents an intelligent control strategy that uses a feedforward artificial neural network in order to improve the performance of the MPPT (Maximum Power Point Tracker) MPPT photovoltaic (PV) power system based on a modified Cuk converter. The proposed neural network control (NNC) strategy is designed to produce regulated variable DC output voltage. The mathematical model of Cuk converter and artificial neural network algorithm is derived. Cuk converter has some advantages compared to other type of converters. However the nonlinearity characteristic of the Cuk converter due to the switching technique is difficult to be handled by conventional controller. To overcome this problem, a neural network controller with online learning back propagation algorithm is developed. The NNC designed tracked the converter voltage output and improve the dynamic performance regardless load disturbances and supply variations. The proposed controller effectiveness during dynamic transient response is then analyze and verified using MATLAB-Simulink. Simulation results confirm the excellent performance of the proposed NNC

    High Accuracy Distributed Target Detection and Classification in Sensor Networks Based on Mobile Agent Framework

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    High-accuracy distributed information exploitation plays an important role in sensor networks. This dissertation describes a mobile-agent-based framework for target detection and classification in sensor networks. Specifically, we tackle the challenging problems of multiple- target detection, high-fidelity target classification, and unknown-target identification. In this dissertation, we present a progressive multiple-target detection approach to estimate the number of targets sequentially and implement it using a mobile-agent framework. To further improve the performance, we present a cluster-based distributed approach where the estimated results from different clusters are fused. Experimental results show that the distributed scheme with the Bayesian fusion method have better performance in the sense that they have the highest detection probability and the most stable performance. In addition, the progressive intra-cluster estimation can reduce data transmission by 83.22% and conserve energy by 81.64% compared to the centralized scheme. For collaborative target classification, we develop a general purpose multi-modality, multi-sensor fusion hierarchy for information integration in sensor networks. The hierarchy is com- posed of four levels of enabling algorithms: local signal processing, temporal fusion, multi-modality fusion, and multi-sensor fusion using a mobile-agent-based framework. The fusion hierarchy ensures fault tolerance and thus generates robust results. In the meanwhile, it also takes into account energy efficiency. Experimental results based on two field demos show constant improvement of classification accuracy over different levels of the hierarchy. Unknown target identification in sensor networks corresponds to the capability of detecting targets without any a priori information, and of modifying the knowledge base dynamically. In this dissertation, we present a collaborative method to solve this problem among multiple sensors. When applied to the military vehicles data set collected in a field demo, about 80% unknown target samples can be recognized correctly, while the known target classification ac- curacy stays above 95%

    Improved Distributed Estimation Method for Environmental\ud time-variant Physical variables in Static Sensor Networks

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    In this paper, an improved distributed estimation scheme for static sensor networks is developed. The scheme is developed for environmental time-variant physical variables. The main contribution of this work is that the algorithm in [1]-[3] has been extended, and a filter has been designed with weights, such that the variance of the estimation errors is minimized, thereby improving the filter design considerably\ud and characterizing the performance limit of the filter, and thereby tracking a time-varying signal. Moreover, certain parameter optimization is alleviated with the application of a particular finite impulse response (FIR) filter. Simulation results are showing the effectiveness of the developed estimation algorithm
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