چکیده
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Due to the spread and dispersed of load points and also growing penetration of wind farms to distribution
systems, feeder reconfiguration strategy has been encountered with a high degree of uncertainty
in such networks. In this way, efficient stochastic framework analysis based on cloud theory is proposed
to handle the feeder reconfiguration problem considering uncertainty in load demands and wind turbine
power. The cloud model, as a linguistic approach, comprises a correlation between randomness and
fuzziness and provides good information to study the uncertain parameter effects on system performance
through qualitative cloud models. According to qualitative-quantitative bidirectional transmission
characteristic of the cloud theory through backward-forward cloud generator algorithm, a stochastic
multi-objective feeder reconfiguration problem is formulated and solved utilizing powerful nondominated
sorting group search optimization algorithm. After obtaining Pareto fronts, the best
compromise solution is determined by using the fuzzy decision-making technique. To demonstrate the
applicability of the proposed method and to compare obtained results with the other literature, deterministic
and stochastic analysis is implemented on the IEEE 33-bus and 69-bus radial distribution systems.
The superiority and satisfying performance of the proposed algorithm can be inferred from the
quality of simulation solutions.
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