T. Morimoto et al., AN INTELLIGENT APPROACH FOR OPTIMAL-CONTROL OF FRUIT-STORAGE PROCESS USING NEURAL NETWORKS AND GENETIC ALGORITHMS, Computers and electronics in agriculture, 18(2-3), 1997, pp. 205-224
Optimal control techniques based on fruit responses offer the possibil
ity for the qualitative improvement of fruit during the storage proces
s. This study presents a new intelligent control technique, including
neural networks and genetic algorithms, for realizing the optimal cont
rol of the fruit-storage process. The control input is a relative humi
dity h, and the control outputs are two types of fruit responses: the
water loss W-h(t) and the development of lesion by fungi D-h(t) of the
fruit (h: relative humidity, t: sampling time). An objective function
is given by the reciprocal number of the sum of the average values in
both W-h(t) and D-h(t). For control, the storage process was divided
into 1 steps. First, responses of W-h(t) and D-h(t), as affected by re
lative humidity, were identified using neural networks. The I-step set
points of relative humidity which maximize the objective function were
then searched for through simulation of the identified model using ge
netic algorithms. Control results suggested that the storage process s
hould be treated as a dynamic process, and an intelligent approach pro
posed here is useful for the optimization of such a control process. (
C) 1997 Elsevier Science B.V.