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Heating Value Prediction for Combustible Fraction of Municipal Solid Waste in Semarang Using Backpropagation Neural Network

机译:利用背部化神经网络对Memarang中的市政固体废物可燃分数的加热价值预测

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Backpropgation neural network was trained to predict of combustible fraction heating value of MSW from the physical composition. Waste-to-Energy (WtE) is a viable option for municipal solid waste (MSW) management. The influence of the heating value of municipal solid waste (MSW) is very important on the implementation of WtE systems. As MSW is heterogeneous material, direct heating value measurements are often not feasible. In this study an empirical model was developed to describe the heating value of the combustible fraction of municipal solid waste as a function of its physical composition of MSW using backpropagation neural network. Sampling process was carried out at Jatibarang landfill. The weight of each sorting sample taken from each discharged MSW vehicle load is 100 kg. The MSW physical components were grouped into paper wastes, absorbent hygiene product waste, styrofoam waste, HD plastic waste, plastic waste, rubber waste, textile waste, wood waste, yard wastes, kitchen waste, coco waste, and miscellaneous combustible waste. Network was trained by 24 datasets with 1200, 769, and 210 epochs. The results of this analysis showed that the correlation from the physical composition is better than multiple regression method.
机译:训练了基础神经网络以预测来自物理成分的MSW可燃分数加热值。废物到能量(WTE)是市政固体废物(MSW)管理的可行选择。城市固体废物(MSW)的加热价值对WTE系统的实施非常重要。由于MSW是异质材料,直接加热值测量通常是不可行的。在本研究中,开发了一种经验模型,以描述城市固体废物的可燃级分的加热值,作为使用反向宣传神经网络的MSW物理组成的函数。采样过程是在Jatibarang垃圾填埋场进行的。从每个排出的MSW车辆负载取出的每个分选样品的重量为100kg。将MSW物理成分分为纸废物,吸收性卫生产品废物,聚苯乙烯泡沫塑料,高清塑料废物,塑料废物,橡胶废物,纺织废物,木材废料,院子废物,厨房废物,可可垃圾和杂项可燃废物。网络接受了24个数据集,其中24个数据集,1200,769和210个时期。该分析结果表明,与物理组成的相关性优于多元回归方法。

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