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首页> 外文期刊>International Journal of Production Research >Cascade neural network algorithm with analytical connection weights determination for modelling operations and energy applications
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Cascade neural network algorithm with analytical connection weights determination for modelling operations and energy applications

机译:具有分析连接权重的级联神经网络算法,用于建模操作和能源应用的确定

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The performance and learning speed of the Cascade Correlation neural network (CasCor) may not be optimal because of redundant hidden units' in the cascade architecture and the tuning of connection weights. This study explores the limitations of CasCor and its variants and proposes a novel constructive neural network (CNN). The basic idea is to compute the input connection weights by generating linearly independent hidden units from the orthogonal linear transformation, and the output connection weights by connecting hidden units in a linear relationship to the output units. The work is unique in that few attempts have been made to analytically determine the connection weights on both sides of the network. Experimental work on real energy application problems such as predicting powerplant electrical energy, predicting seismic hazards to prevent fatal accidents and reducing energy consumption by predicting building occupancy detection shows that analytically calculating the connection weights and generating non-redundant hidden units improves the convergence of the network. The proposed CNN is compared with that of the state-of-the-art machine learning algorithms. The work demonstrates that proposed CNN predicts a wide range of applications better than other methods.
机译:级联相关神经网络(级联)的性能和学习速度由于级联架构中的冗余隐藏单元和连接权重的调谐而不是最佳的。本研究探讨了级联及其变体的局限性,并提出了一种新的建设性神经网络(CNN)。基本思想是通过从正交线性变换产生线性独立的隐藏单元来计算输入连接权重,并且通过将隐藏的单元连接到输出单元的线性关系中来实现输出连接权重。这项工作是独一无二的,因为已经进行了几次尝试,用于分析网络两侧的连接权重。预测动力装置的实验工作,如预测动力装置的电能,预测防止致命事故的地震危害以及通过预测建筑物占用检测降低能量消耗表明,分析计算连接权重,产生非冗余隐藏单元提高了网络的收敛性。所提出的CNN与最先进的机器学习算法进行比较。该工作表明,提出的CNN预测了比其他方法更好的应用。

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