首页> 外文会议>International Mechanical Engineering Congress and Exposition >(V08AT09A052) APPLICATION OF ARTIFICIAL NEURAL NETWORK FOR SINGLE HORIZONTAL BARE TUBE AND BARE TUBE BUNDLES IN GAS-SOLID (AIR-SOLID) FLUIDIZED BED OF SMALL AND LARGE PARTICLES: HEAT TRANSFER PREDICTIONS
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(V08AT09A052) APPLICATION OF ARTIFICIAL NEURAL NETWORK FOR SINGLE HORIZONTAL BARE TUBE AND BARE TUBE BUNDLES IN GAS-SOLID (AIR-SOLID) FLUIDIZED BED OF SMALL AND LARGE PARTICLES: HEAT TRANSFER PREDICTIONS

机译:(V08AT09A052)在气固(空气固体)流化床中的单水平裸管和裸管束的应用中的人工神经网络在小型和大粒子流化床中的应用:传热预测

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This paper presents heat transfer analysis of single horizontal bare tube and in-line arrangement of bare tube bundles in gas-solid(air-solid) fluidized bed and predictions are done by using Artificial Neural Network (ANN) based on the experimental data. Measurement of average heat transfer coefficient was made by local thermal simulation technique in a cold square bubbling air-fluidized bed of size 0.305m x 0.305m. Studies were conducted for single bare tube and bare tube bundles of in -line arrangement using beds of small (average particle diameter less than 1mm) silica sand particles and of large (average particle diameter greater than 1mm) particle (raagi and mustard). Within the range of experimental conditions influence of bed particle diameter (D_p), fluidizing velocity (U) were studied, which are significant parameters affecting heat transfer. Artificial neural networks (ANNs) have been receiving an increasing attention for simulating engineering systems due to some interesting characteristics such as learning capability, fault tolerance, and non-linearity. Here, feed-forward architecture and trained by back-propagation technique is adopted to predict heat transfer analysis found from experimental results. The ANN is designed to suit the present system which has 3 inputs and 2 outputs. The network predictions are found to be in very good agreement with the experimental observed values of bare tube heat transfer coefficient (h_b) and Nusselt number of bare tube (Nu_b).
机译:本文介绍了单水平裸管的传热分析,裸管束在气固(空气固体)流化床中的直线布置,通过基于实验数据使用人工神经网络(ANN)完成预测。平均传热系数的测量是通过局部热仿真技术在冷方向气泡气体流化床尺寸为0.305m×0.305米。使用小(平均粒径小于1mm)二氧化硅砂颗粒的床和大(平均粒径大于1mm)颗粒(Raagi和芥末)的单个裸管和裸管束进行研究。在实验条件范围内,研究了流化速度(U),是影响热传递的重要参数。由于一些有趣的特性,例如学习能力,容错和非线性等一些有趣的特性,人工神经网络(ANNS)一直受到模拟工程系统的越来越关注。这里,采用前馈架构和由后传播技术训练来预测从实验结果中发现的传热分析。 ANN旨在适合本系统,具有3个输入和2个输出。发现网络预测与裸管传热系数(H_B)的实验观察值非常良好,并且裸管(NU_B)的露天数量。

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