Download E-books Artificial Intelligence in Power System Optimization PDF

By Weerakorn Ongsakul

With the significant elevate of AI purposes, AI is being more and more used to resolve optimization difficulties in engineering. long ago 20 years, the functions of man-made intelligence in energy platforms have attracted a lot learn. This publication covers the present point of purposes of synthetic intelligence to the optimization difficulties in strength platforms. This booklet serves as a textbook for graduate scholars in electrical energy approach administration and is additionally invaluable should you have an interest in utilizing synthetic intelligence in strength method optimization.

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