The integrated innovation of artificial intelligence and electrical automation technology not only represents a further innovation of traditional models but also promotes the innovative development of both artificial intelligence and electrical automation technology. This paper delves into the significance of the integrated innovative applications of artificial intelligence and electrical automation technology, as well as the strategies for such applications, aiming to better achieve the intelligent development of electrical automation technology.
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