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A learning technique for a general purpose optimizer

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dc.contributor.author Sigrimis, NA en
dc.contributor.author Arvanitis, KG en
dc.contributor.author Gates, RS en
dc.date.accessioned 2014-06-06T06:44:12Z
dc.date.available 2014-06-06T06:44:12Z
dc.date.issued 2000 en
dc.identifier.issn 01681699 en
dc.identifier.uri http://dx.doi.org/10.1016/S0168-1699(99)00079-4 en
dc.identifier.uri http://62.217.125.90/xmlui/handle/123456789/1749
dc.subject Adaptive control en
dc.subject Fog en
dc.subject Intelligence en
dc.subject Mist en
dc.subject Optimisation en
dc.subject Perceptron en
dc.subject Plant propagation en
dc.subject.other Adaptive control systems en
dc.subject.other Algorithms en
dc.subject.other Computer simulation en
dc.subject.other Control system analysis en
dc.subject.other Fog en
dc.subject.other Humidity control en
dc.subject.other Learning systems en
dc.subject.other Neural networks en
dc.subject.other Optimal control systems en
dc.subject.other Plants (botany) en
dc.subject.other Process control en
dc.subject.other Reliability en
dc.subject.other Plant propagation en
dc.subject.other Agriculture en
dc.title A learning technique for a general purpose optimizer en
heal.type journalArticle en
heal.identifier.primary 10.1016/S0168-1699(99)00079-4 en
heal.publicationDate 2000 en
heal.abstract The goal of the machine learning method implemented in this article is to broaden the region of operability of an adaptive control system by switching multiple controller models. The learning system determines a separate set of control parameter values, for optimal performance under given operating conditions, and stores them in memory. In this way, the controller is able to operate effectively over the whole environment. The basic scheme implements a single neuron, the perceptron, which approximates the process model and then directly computes the control signals. An example application is also described of an innovative sensing method, which has been developed to replace leaf sensors in plant propagation chambers, by emulating the sensor in software. Such chambers present critical situations for control because of the high humidity levels required, which makes direct sensing methods unsuitable. The proposed method enhanced the reliability of the control system and eliminated the need for costly electronic leaf sensors and the associated need for great care and frequent calibration. The method in principle combines ordinary measurements of ambient temperature, humidity and radiation, to calculate the controls of the humidification process in mist or fog propagation chambers. The performance surface was studied and a modification of the searching algorithm has improved the learning rate significantly. The method is applicable to any system whose performance can be defined and measured by simulation or experiment. (C) 2000 Elsevier Science B.V.The goal of the machine learning method implemented in this article is to broaden the region of operability of an adaptive control system by switching multiple controller models. The learning system determines a separate set of control parameter values, for optimal performance under given operating conditions, and stores them in memory. In this way, the controller is able to operate effectively over the whole environment. The basic scheme implements a single neuron, the perceptron, which approximates the process model and then directly computes the control signals. An example application is also described of an innovative sensing method, which has been developed to replace leaf sensors in plant propagation chambers, by emulating the sensor in software. Such chambers present critical situations for control because of the high humidity levels required, which makes direct sensing methods unsuitable. The proposed method enhanced the reliability of the control system and eliminated the need for costly electronic leaf sensors and the associated need for great care and frequent calibration. The method in principle combines ordinary measurements of ambient temperature, humidity and radiation, to calculate the controls of the humidification process in mist or fog propagation chambers. The performance surface was studied and a modification of the searching algorithm has improved the learning rate significantly. The method is applicable to any system whose performance can be defined and measured by simulation or experiment. en
heal.publisher Elsevier Science Ltd, Exeter, United Kingdom en
heal.journalName Computers and Electronics in Agriculture en
dc.identifier.issue 2 en
dc.identifier.volume 26 en
dc.identifier.doi 10.1016/S0168-1699(99)00079-4 en
dc.identifier.spage 83 en
dc.identifier.epage 103 en


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