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Landfill area estimation based on integrated waste disposal options and solid waste forecasting using modified ANFIS model

机译:基于综合废物处理方案的垃圾填埋区估算和使用改进的ANFIS模型进行固体废物预测

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摘要

Solid waste prediction is crucial for sustainable solid waste management. The collection of accurate waste data records is challenging in developing countries. Solid waste generation is usually correlated with economic, demographic and social factors. However, these factors are not constant due to population and economic growth. The objective of this research is to minimize the land requirements for solid waste disposal for implementation of the Malaysian vision of waste disposal options. This goal has been previously achieved by integrating the solid waste forecasting model, waste composition and the Malaysian vision. The modified adaptive neural fuzzy inference system (MANFIS) was employed to develop a solid waste prediction model and search for the optimum input factors. The performance of the model was evaluated using the root mean square error (RMSE) and the coefficient of determination (R~2). The model validation results are as follows: RMSE for training = 0.2678, RMSE for testing = 3.9860 and R~2 = 0.99. Implementation of the Malaysian vision for waste disposal options can minimize the land requirements for waste disposal by up to 43%.
机译:固体废物预测对于可持续的固体废物管理至关重要。在发展中国家,收集准确的废物数据记录具有挑战性。固体废物的产生通常与经济,人口和社会因素相关。但是,由于人口和经济增长,这些因素并不是恒定不变的。这项研究的目的是最大程度地减少固体废物处置的土地需求,以实现马来西亚废物处置方案的愿景。通过整合固体废物预测模型,废物成分和马来西亚的愿景,以前已经实现了这一目标。改进的自适应神经模糊推理系统(MANFIS)被用来开发固体废物预测模型并寻找最佳的输入因子。使用均方根误差(RMSE)和确定系数(R〜2)评估模型的性能。模型验证结果如下:训练的RMSE = 0.2678,测试的RMSE = 3.9860,R〜2 = 0.99。实施马来西亚废物处理方案的愿景可以将废物处理所需的土地需求最小化达43%。

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