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Fuzzy Logic Controller Based Distributed Generation Integration Strategy for Stochastic Performance Improvement
Author(s) -
J. P. Sharma,
H. Ravishankar Kamath
Publication year - 2016
Publication title -
advances in electrical engineering
Language(s) - English
Resource type - Journals
eISSN - 2356-6655
pISSN - 2314-7636
DOI - 10.1155/2016/9760538
Subject(s) - fuzzy logic , controller (irrigation) , distributed generation , computer science , node (physics) , control theory (sociology) , electric power system , engineering , power (physics) , reliability engineering , control engineering , control (management) , renewable energy , artificial intelligence , electrical engineering , physics , structural engineering , quantum mechanics , agronomy , biology
In the restructured environment, distributed generation (DG) is considered as a very promising option due to a high initial capital cost of conventional plants, environmental concerns, and power shortage. Apart from the above, distributed generation (DG) has also abilities to improve performance of feeder. Most of the distribution feeders have radial structure, which compel to observe the impact of distributed generations on feeder performance, having different characteristics and composition of time varying static ZIP load models. Two fuzzy-based expert system is proposed for selecting and ranking the most appropriated periods to an integration of distributed generations with a feeder. Madami type fuzzy logic controller was developed for sizing of distributed generation, whereas Sugeno type fuzzy logic controller was developed for the DG location. Input parameters for Madami fuzzy logic controller are substation reserve capacity, feeder power loss to load ratio, voltage unbalance, and apparent power imbalances. DG output, survivability index, and node distance from substation are chosen as input to Sugeno type fuzzy logic controller. The stochastic performance of proposed fuzzy expert systems was evaluated on a modified IEEE 37 node test feeder with 15 minutes characteristics time interval varying static ZIP load models

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