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Multi Objective Optimization of an Evolutionary Feedforward Neural Network for the Automotive Air Conditioning System Performance Prediction

机译:用于汽车空调系统性能预测的进化前馈神经网络的多目标优化

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In this paper, a novel multi-objective evolutionary artificial neural network approach is proposed to predict the performance of an automotive air conditioning (AAC) system. A Feedforward Neural Network (FNN) was used to simulate the cooling capacity and compressor power under different combination of input compressor speeds, evaporator inlet air speeds, air temperature upstream of the condenser and evaporator. Differential Evolution (DE) algorithm was employed to automatically optimize the FNN's parameters, involving the number of hidden layers and the number of neurons in each hidden layer. The training of connection weights and biases is carried out using the basic backpropagation algorithm with Levenberg Marquardt nonlinear optimization method. For the purpose of multi-objective optimization, the DE algorithm is incorporated with two key elements of the NSGA-II (Non-dominated Sorting Genetic Algorithm II), namely the non-dominated sorting method and the crowding distance metric. A parametric study was performed on the proposed algorithm and the best DE base variant was determined. The experimental results show that the proposed algorithm with DE based variant 'DE/Best/1' exhibited its superiority in term of prediction performance. The best neural network obtained is FNN with 4×18×2 network configuration and its network complexity is equivalent to 108 connection weights. It yields an average relative error of 0.60% for the prediction of cooling power and one of 3.0% for the prediction of compressor power.
机译:本文提出了一种新型多目标进化人工神经网络方法,以预测汽车空调(AAC)系统的性能。前馈神经网络(FNN)用于在输入压缩机速度的不同组合,蒸发器入口空气速度,冷凝器和蒸发器上游的空气温度下模拟冷却能力和压缩机功率。采用差分演进(DE)算法来自动优化FNN的参数,涉及隐藏层的数量和每个隐藏层中的神经元数。使用具有Levenberg Marquardt非线性优化方法的基本反向验证算法进行连接权重和偏差的训练。出于多目标优化的目的,DE算法与NSGA-II的两个关键元素(非主导的分类遗传算法II)纳入其中,即非主导排序方法和拥挤距离度量。对所提出的算法进行参数研究,确定了最佳的DE碱基变型。实验结果表明,该算法具有基于DE基于VAL /最佳/ 1'的算法在预测性能期间表现出其优越性。获得的最佳神经网络是具有4×18×2网络配置的FNN,其网络复杂性相当于108个连接权重。对于预测冷却功率的预测,它的平均相对误差为0.60%,对于预测压缩机功率的预测中的3.0%。

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