首页> 外文期刊>Fuel >Prognostication of lignocellulosic biomass pyrolysis behavior using ANFIS model tuned by PSO algorithm
【24h】

Prognostication of lignocellulosic biomass pyrolysis behavior using ANFIS model tuned by PSO algorithm

机译:利用PSO算法调整的ANFIS模型对木质纤维素生物质热解行为的预后。

获取原文
获取原文并翻译 | 示例
           

摘要

In-depth knowledge on pyrolysis behavior of lignocellulosic biomass is pivotal for efficient design, optimization, and control of thermochemical biofuel production processes. Experimental thermogravimetric analysis (TGA) is usually employed to peruse the pyrolysis kinetics of biomass samples. In addition to that, the main constituents of biomass (i.e., cellulose, hemicellulose, lignin) as well as the process heating rate can excellently reflect its pyrolysis characteristics through modeling techniques. However, the application of statistical and phenomenological models for extremely complex and highly nonlinear phenomena like lignocellulose pyrolysis is challenging. To address this challenge, adaptive network-based fuzzy inference system (ANFIS) was consolidated with particle swarm optimization (PSO) algorithm to prognosticate the kinetic constants of lignocellulose pyrolysis. More specifically, the PSO algorithm was applied to tune membership function parameters of the ANFIS model. Three ANFIS-PSO topologies were designed and trained to estimate the kinetic constants of lignocellulose pyrolysis, i.e., energy of activation, pre-exponential coefficient, and order of reaction. The input variables of the developed models were biomass main constituents and the process heating rate. The developed models could predict the kinetic constants of lignocellulosic biomass pyrolysis with an R-2 > 0.970, an MAPE < 3.270%, and an RMSE < 5.006. The pyrolysis behaviors of three different biomass feedstocks (unseen data to the developed models) were adequately prognosticated with an R-2 > 0.91 using the developed models, further confirming their fidelity. Overall, the lignocellulose pyrolysis behavior could be reliably and accurately estimated using the trained ANFIS-PSO approaches as an alternative to the TGA measurements. In order to make practical use of the trained models, a handy freely-accessible software platform was designed using the selected ANFIS-PSO models for approximating biomass pyrolysis kinetics.
机译:对木质纤维素生物质热解行为的深入了解对于有效设计,优化和控制热化学生物燃料生产过程至关重要。通常采用实验热重分析(TGA)仔细研究生物质样品的热解动力学。除此之外,生物质的主要成分(即纤维素,半纤维素,木质素)以及过程加热速率可以通过建模技术很好地反映其热解特性。然而,将统计和现象学模型应用于极复杂和高度非线性的现象(如木质纤维素热解)的过程具有挑战性。为了解决这一挑战,将基于自适应网络的模糊推理系统(ANFIS)与粒子群优化(PSO)算法合并在一起,以预测木质纤维素热解的动力学常数。更具体地说,将PSO算法应用于调整ANFIS模型的隶属函数参数。设计并训练了三种ANFIS-PSO拓扑,以估计木质纤维素热解的动力学常数,即活化能,指数前系数和反应顺序。开发模型的输入变量是生物质的主要成分和过程加热速率。所开发的模型可以预测木质纤维素生物质热解的动力学常数,其中R-2> 0.970,MAPE <3.270%,RMSE <5.006。使用开发的模型,R-2> 0.91可以充分预测三种不同生物质原料的热解行为(对于开发的模型而言是未知数据),从而进一步证实了它们的保真度。总体而言,使用训练有素的ANFIS-PSO方法作为TGA测量的替代方法,可以可靠,准确地估算木质纤维素的热解行为。为了实际使用经过训练的模型,使用选定的ANFIS-PSO模型设计了一个方便免费使用的软件平台,用于近似生物质热解动力学。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号