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A fuzzy control model based on BP neural network arithmetic for optimal control of smart city facilities

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Figure

Table 1 Smart city model three level index weight (government experts)
Table 3 Smart city model first-level index weight Index name Smart city
Table 5 Experimental outcome of diverse cryptic layer node Hidden layer nodes Number of iterations Mean square error
Fig. 2 Prediction of mean square error curve by BP neural network Fig. 3 Training results of hidden layer nodes
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