Applications of Artificial Neural Networks in Electric Power Industry: A Review
نویسندگان
چکیده
This paper presents an overview on applications of artificial neural network in electric power industry (EPI) which is currently undergoing an extraordinary development. One of the most thrilling and potentially cost-effective recent developments in this field is increasing usage of artificial intelligence techniques viz. artificial neural networks (ANNs), genetic algorithm, fuzzy logic, and expert systems. ANNs in particular, have involved enormous attention due to the variety of advantages they offer over the conventional methods. Among these advantages the ability to adapt, fast speed, massive parallelism, and robustness are the most profound. According to the growth rate of ANNs applications in different areas of power industry, this paper introduce a brief outline in economic load dispatch, load forecasting, and security assessment. Advantages and disadvantages of using ANNs in above mentioned areas and the main issues in these fields have also been explained.
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