modeling and simulation of apple drying, using artificial neural network and neuro -taguchi’s method
Authors
abstract
important parameters on apple drying process are investigated experimentally and modeled employing artificial neural network and neuro-taguchi's method. experimental results show that the apple drying curve stands in the falling rate period of drying. temperature is the most important parameter that has a more pronounced effect on drying rate than the other two parameters i.e. air velocity and the thickness of apple slices. in order to model the drying process, a software was developed which uses the error back propagation algorithm for training. at first, the software was used to simulate the time-dependent variations of moisture content using neural network. then in order to model the time derivation of moisture ratio in break point, the software was utilized in two ways. first, it was used with no use of any optimization method for modeling the process. in the other approach, the software in a hybrid fashion with taguchi's method as an optimization method is utilized to correct weight matrix entries. the results demonstrate that the use of neuro-taguchi's method can give some improvements over neural network accuracy as compared with conventional neural networks approach. by using neuro- taguchi's method, error is reduced by about 46.4%.
similar resources
scour modeling piles of kambuzia industrial city bridge using hec-ras and artificial neural network
today, scouring is one of the important topics in the river and coastal engineering so that the most destruction in the bridges is occurred due to this phenomenon. whereas the bridges are assumed as the most important connecting structures in the communications roads in the country and their importance is doubled while floodwater, thus exact design and maintenance thereof is very crucial. f...
Simulation and modeling of friction welding of stainless steel to aluminum alloy using finite element method and artificial neural network
Aluminum to stainless steel joints are broadly used in industries in order to reduce fuel consumption. While fusion welding is not a suitable method to join these metals. solid state welding, like friction welding (FW), is an effective way to this process. However, risk of intermetallic compounds (IMCs) formation is probable in these welds. In previews investigations formation of FeAl3, Fe2Al5 ...
full textSimulation and modeling of friction welding of stainless steel to aluminum alloy using finite element method and artificial neural network
Aluminum to stainless steel joints are broadly used in industries in order to reduce fuel consumption. While fusion welding is not a suitable method to join these metals. solid state welding, like friction welding (FW), is an effective way to this process. However, risk of intermetallic compounds (IMCs) formation is probable in these welds. In previews investigations formation of FeAl3, Fe2Al5 ...
full textModeling and Simulation of Water Softening by Nanofiltration Using Artificial Neural Network
An artificial neural network has been used to determine the volume flux and rejections of Ca2+ , Na+ and Cl¯, as a function of transmembrane pressure and concentrations of Ca2+, polyethyleneimine, and polyacrylic acid in water softening by nanofiltration process in presence of polyelectrolytes. The feed-forward multi-layer perceptron artificial neural network including an eight-neuron hidde...
full textThe efficiency of Artificial Neural Network, Neuro-Fuzzy and Multivariate Regression models for runoff and erosion simulation using rainfall simulator
1- INTRODUCTION According to the complexity of environmental factors related to erosion and runoff, correct simulation of these variables find importance under rain intensity domain of watershed areas. Although modeling of erosion and runoff by Artificial Neural Network and Neuro-Fuzzy based on rainfall-runoff and discharge-sediment models were widely applied by researchers, scrutinizing Arti...
full textMy Resources
Save resource for easier access later
Journal title:
journal of agricultural science and technologyPublisher: tarbiat modares university
ISSN 1680-7073
volume 11
issue Supplementary Issue 2010
Hosted on Doprax cloud platform doprax.com
copyright © 2015-2023