Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
5756568 | Waste Management | 2017 | 12 Pages |
Abstract
The heating values, particularly lower heating values of burning municipal solid waste are critically important parameters in operating circulating fluidized bed incineration systems. However, the heating values change widely and frequently, while there is no reliable real-time instrument to measure heating values in the process of incinerating municipal solid waste. A rapid, cost-effective, and comparative methodology was proposed to evaluate the heating values of burning MSW online based on prior knowledge, expert experience, and data-mining techniques. First, selecting the input variables of the model by analyzing the operational mechanism of circulating fluidized bed incinerators, and the corresponding heating value was classified into one of nine fuzzy expressions according to expert advice. Development of prediction models by employing four different nonlinear models was undertaken, including a multilayer perceptron neural network, a support vector machine, an adaptive neuro-fuzzy inference system, and a random forest; a series of optimization schemes were implemented simultaneously in order to improve the performance of each model. Finally, a comprehensive comparison study was carried out to evaluate the performance of the models. Results indicate that the adaptive neuro-fuzzy inference system model outperforms the other three models, with the random forest model performing second-best, and the multilayer perceptron model performing at the worst level. A model with sufficient accuracy would contribute adequately to the control of circulating fluidized bed incinerator operation and provide reliable heating value signals for an automatic combustion control system.
Keywords
Training timeACCSNEBCARTDCsPEBANFISMLPMSWCFBHeating valueBack-propagationPSOParticle swarm optimizationCirculating fluidized bedRandom forestSubtractive clusteringMunicipal solid wasteAdaptive neuro-fuzzy inference systemDistributed control systemZeroClassification and regression treeSVMSupport vector machineMultilayer perceptron
Related Topics
Physical Sciences and Engineering
Earth and Planetary Sciences
Geotechnical Engineering and Engineering Geology
Authors
Haihui You, Zengyi Ma, Yijun Tang, Yuelan Wang, Jianhua Yan, Mingjiang Ni, Kefa Cen, Qunxing Huang,