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Approximate Life Cycle Assessment of Product Concepts Using a Hybrid Genetic Algorithm and Neural Network Approach

机译:使用混合遗传算法和神经网络方法对产品概念的近似生命周期评估

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Environmental impact assessment of products has been a key area of research and development for sustainable product development. Many companies copy these trends and they consider environmental criteria into the product design process. Life Cycle Assessment (LCA) is used to support the decision-making for product design and the best alternative can be selected by its estimated environmental impacts and benefits. The need for analytical LCA has resulted in the development of approximate LCA. This paper presents an optimization strategy for approximate LCA using a hybrid approach which incorporate genetic algorithms (GAs) and neural networks (NNs). In this study, GAs are employed to select feature subsets to eliminate irrelevant factors and determine the number of hidden nodes and processing elements. In addition, GAs will optimize the connection weights between layers of NN simultaneously. Experimental results show that a hybrid GA and NN approach outperforms the conventional backpropagation neural network and verify the effectiveness of the proposed approach.
机译:对产品的环境影响评估是可持续产品开发的研究与开发的关键领域。许多公司复制这些趋势,并将环境标准考虑到产品设计过程中。生命周期评估(LCA)用于支持产品设计的决策,最佳替代方案可以通过其估计的环境影响和益处来选择。对分析LCA的需求导致了近似LCA的发展。本文介绍了使用遗传算法(天然气)和神经网络(NNS)的混合方法的近似LCA的优化策略。在该研究中,采用气体来选择要素子集以消除无关因素并确定隐藏节点和处理元件的数量。此外,气体将同时优化NN层之间的连接权重。实验结果表明,混合GA和NN接近优于传统的反向化神经网络,验证了所提出的方法的有效性。

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