3 research outputs found

    Grid-enabling Non-computer Resources

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    Multi-objective optimal power resources planning of microgrids with high penetration of intermittent nature generation and modern storage systems

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    Microgrids are self-controlled entities at the distribution voltage level that interconnect distributed energy resources (DERs) with loads and can be operated in either grid-connected or islanded mode. This type of active distribution network has evolved as a powerful concept to guarantee a reliable, efficient and sustainable electricity delivery as part of the power systems of the future. However, benefits of microgrids, such as the ancillary services (AS) provision, are not possible to be properly exploited before traditional planning methodologies are updated. Therefore, in this doctoral thesis, a named Probabilistic Multi-objective Microgrid Planning methodology with two versions, POMMP and POMMP2, is proposed for effective decision-making on the optimal allocation of DERs and topology definition under the paradigm of microgrids with capacity for providing AS to the main power grid. The methodologies are defined to consider a mixed generation matrix with dispatchable and non-dispatchable technologies, as well as, distributed energy storage systems and both conventional and power-electronic-based operation configurations. The planning methodologies are formulated based on a so-called true-multi-objective optimization problem with a configurable set of three objective functions. Accordingly, the capacity to supply AS is optimally enhanced with the maximization of the available active residual power in grid-connected operation mode; the capital, maintenance, and operation costs of microgrid are minimized, while the revenues from the services provision and participation on liberalized markets are maximized in a cost function; and the active power losses in microgrid麓s operation are minimized. Furthermore, a probabilistic technique based on the simulation of parameters from their probabilistic density function and Monte Carlo Simulation is adopted to model the stochastic behavior of the non-dispatchable renewable generation resources and load demand as the main sources of uncertainties in the planning of microgrids. Additionally, POMMP2 methodology particularly enhances the proposal in POMMP by modifying the methodology and optimization model to consider the optimal planning of microgrid's topology with the allocation of DERs simultaneously. In this case, the concept of networked microgrid is contemplated, and a novel holistic approach is proposed to include a multilevel graph-partitioning technique and subsequent iterative heuristic optimization for the optimal formation of clusters in the topology planning and DERs allocation process. This microgrid planning problem leads to a complex non-convex mixed-integer nonlinear optimization problem with multiple contradictory objective functions, decision variables, and diverse constraint conditions. Accordingly, the optimization problem in the proposed POMMP/POMMP2 methodologies is conceived to be solved using multi-objective population-based metaheuristics, which gives rise to the adaptation and performance assessment of two existing optimization algorithms, the well-known Non-dominated Sorting Genetic Algorithm II (NSGAII) and the Multi-objective Evolutionary Algorithm Based on Decomposition (MOEA/D). Furthermore, the analytic hierarchy process (AHP) is tested and proposed for the multi-criteria decision-making in the last step of the planning methodologies. The POMMP and POMMP2 methodologies are tested in a 69-bus and 37-bus medium voltage distribution network, respectively. Results show the benefits of an a posteriori decision making with the true-multi-objective approach as well as a time-dependent planning methodology. Furthermore, the results from a more comprehensive planning strategy in POMMP2 revealed the benefits of a holistic planning methodology, where different planning tasks are optimally and simultaneously addressed to offer better planning results.Las microrredes son entes autocontrolados que operan en media o baja tensi贸n, interconectan REDs con las cargas y pueden ser operadas ya sea en modo conectado a la red o modo isla. Este tipo de red activa de distribuci贸n ha evolucionado como un concepto poderoso para garantizar un suministro de electricidad fiable, eficiente y sostenible como parte de los sistemas de energ铆a del futuro. Sin embargo, para explotar los beneficios potenciales de las microrredes, tales como la prestaci贸n de servicios auxiliares (AS), primero es necesario formular apropiadas metodolog铆as de planificaci贸n. En este sentido, en esta tesis doctoral, una metodolog铆a probabil铆stica de planificaci贸n de microrredes con dos versiones, POMMP y POMMP2, es propuesta para la toma de decisiones efectiva en la asignaci贸n 贸ptima de DERs y la definici贸n de la topolog铆a de microrredes bajo el paradigma de una microrred con capacidad para proporcionar AS a la red principal. Las metodolog铆as se definen para considerar una matriz de generaci贸n mixta con tecnolog铆as despachables y no despachables, as铆 como sistemas distribuidos para el almacenamiento de energ铆a y la interconnecci贸n de recursos con o sin una interfaz basada en dispositivos de electr贸nica de potencia. Las metodolog铆as de planificaci贸n se formulan sobre la base de un problema de optimizaci贸n multiobjetivo verdadero con un conjunto configurable de tres funciones objetivo. Con estos se pretende optimizar la capacidad de suministro de AS con la maximizaci贸n de la potencia activa residual disponible en modo conectado a la red; la minimizaci贸n de los costos de capital, mantenimiento y funcionamiento de la microrred al tiempo que se maximizan los ingresos procedentes de la prestaci贸n de servicios y la participaci贸n en los mercados liberalizados; y la minimizaci贸n de las p茅rdidas de energ铆a activa en el funcionamiento de la microrred. Adem谩s, se adopta una t茅cnica probabil铆stica basada en la simulaci贸n de par谩metros a partir de la funci贸n de densidad de probabilidad y el m茅todo de Monte Carlo para modelar el comportamiento estoc谩stico de los recursos de generaci贸n renovable no despachables. Adicionalmente,la POMMP2 mejora la propuesta de POMMP modificando la metodolog铆a y el modelo de optimizaci贸n para considerar simult谩neamente la planificaci贸n 贸ptima de la topolog铆a de la microrred con la asignaci贸n de DERs. As铆 pues, se considera el concepto de microrredes interconectadas en red y se propone un novedoso enfoque hol铆stico que incluye una t茅cnica de partici贸n de gr谩ficos multinivel y optimizaci贸n iterativa heur铆stica para la formaci贸n 贸ptima de clusters para el planeamiento de la topolog铆a y asignaci贸n de DERs. Este problema de planificaci贸n de microrredes da lugar a un complejo problema de optimizaci贸n mixto, no lineal, no convexos y con m煤ltiples funciones objetivo contradictorias, variables de decisi贸n y diversas condiciones de restricci贸n. Por consiguiente, el problema de optimizaci贸n en las metodolog铆as POMMP/POMMP2 se concibe para ser resuelto utilizando t茅cnicas multiobjetivo de optimizaci贸n metaheur铆sticas basadas en poblaci贸n, lo cual da lugar a la adaptaci贸n y evaluaci贸n del rendimiento de dos algoritmos de optimizaci贸n existentes, el conocido Non-dominated Sorting Genetic Algorithm II (NSGAII) y el Evolutionary Algorithm Based on Decomposition (MOEA/D). Adem谩s, se ha probado y propuesto el uso de la t茅cnica de proceso anal铆tico jer谩rquico (AHP) para la toma de decisiones multicriterio en el 煤ltimo paso de las metodolog铆as de planificaci贸n. Las metodolog铆as POMMP/POMMP2 son probadas en una red de distribuci贸n de media tensi贸n de 69 y 37 buses, respectivamente. Los resultados muestran los beneficios de la toma de decisiones a posteriori con el enfoque de optimizaci贸n multiobjetivo verdadero, as铆 como una metodolog铆a de planificaci贸n dependiente del tiempo. Adem谩s, los resultados de la estrategia de planificaci贸n con POMMP2 revelan los beneficios de una metodolog铆a de planificaci贸n hol铆stica, en la que las diferentes tareas de planificaci贸n se abordan de manera 贸ptima y simult谩nea para ofrecer mejores resultados de planificaci贸n.L铆nea de investigaci贸n: Planificaci贸n de redes inteligentes We thank to the Administrative Department of Science, Technology and Innovation - Colciencias, Colombia, for the granted National Doctoral funding program - 647Doctorad
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