Application of a modified perceptron learning algorithm to monitoring and control

Author(s):  
Mathews Chibuluma ◽  
Josephat Kalezhi
1993 ◽  
Vol 2 (4) ◽  
pp. 385-387 ◽  
Author(s):  
Martin Anthony ◽  
John Shawe-Taylor

The perceptron learning algorithm quite naturally yields an algorithm for finding a linearly separable boolean function consistent with a sample of such a function. Using the idea of a specifying sample, we give a simple proof that, in general, this algorithm is not efficient.


1995 ◽  
Vol 43 (7) ◽  
pp. 1696-1702 ◽  
Author(s):  
S.N. Diggavi ◽  
J.J. Shynk ◽  
N.J. Bershad

2018 ◽  
Author(s):  
Toviah Moldwin ◽  
Idan Segev

AbstractThe perceptron learning algorithm and its multiple-layer extension, the backpropagation algorithm, are the foundations of the present-day machine learning revolution. However, these algorithms utilize a highly simplified mathematical abstraction of a neuron; it is not clear to what extent real biophysical neurons with morphologically-extended nonlinear dendritic trees and conductance-based synapses could realize perceptron-like learning. Here we implemented the perceptron learning algorithm in a realistic biophysical model of a layer 5 cortical pyramidal cell. We tested this biophysical perceptron (BP) on a memorization task, where it needs to correctly binarily classify 100, 1000, or 2000 patterns, and a generalization task, where it should discriminate between two “noisy” patterns. We show that the BP performs these tasks with an accuracy comparable to that of the original perceptron, though the memorization capacity of the apical tuft is somewhat limited. We concluded that cortical pyramidal neurons can act as powerful classification devices.


One of the greatest challenges facing effective forest management in the world is the increasing rate of illegal logging and encroachment. This ismore rampant in the tropical rainforest ecosystem of Nigeria due to its richness in desirable tropical hardwood timber species and fertile land. Government policies, institutional support in forest management and enlightenment have not succeeded in eliminating this menace. This situation presents real challenges to professionals in forest management that it has become difficult to determine the future of tropical rainforest ecosystem in Nigeria and other developing countries due to the negative impacts of illegal logging include increased incidences of global warming, environmental degradation, biodiversity, loss of revenue to government and so on. Therefore, the need to develop effective intelligent strategies or solutions to combat the menace has become inevitable. This work presents the Model design and implementation of a Deforestation Control and Monitoring System with an intelligent framework for deforestation detection and control system using machine learning algorithm and wireless sensor network, that take proactive and reactive measures to curb deforestation. The proposed system consists of four layers -the physical layer, the communication layer, Knowledge layer, and presentation layer. The system is developed in an environment characterized by Unity 3D incorporated with C# as the front end and MySQL as the backend. Unity 3D simulation tool is used for the experimental test bed and python is used for image processing and classification.


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