Multi-objective optimisation of core losses in AC rotating electrical machines by use of fuzzy logic
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Date
2007
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Publisher
University of Dar es Salaam
Abstract
Electric motors use more than half of all electricity, worldwide International research bodies calculate that over 50% of drivepower electricity could be saved if motors and drive systems become more efficient. Electrical machines designs present a mathematically indeterminate problem. There is no single optimum design, but there exist different ways to solve a design problem in electrical machines. As a substantial part of the losses in electric machine is the loss in the iron core, it is therefore important to consider them for optimization in order to still improve the motor efficiency. In this thesis, an Iron loss prediction and optimization model was developed which ensures minimized from loss for any standard motor frame. Through the generated optimal points of stator bore (internal stator core diameter), optD, and airgrap magnetic flux density, optB, a new motor geometry is reconfigured which has a guaranteed lowered iron loss and also total motor loss. Through a statistical tool and a curve fitting method novel empirical formulate have been formulated for each motor frame instigated. Experimental results of original motor frames were compared with the new result of the design. This showed an improvement of motor efficiency. Also empirical formulate were developed which can greatly assist motor designers in a much more easier way to search for an optimal motor design, which no necessity every time to develop initially a computer model for every change of a design.
Description
Available in print form, East Africana Collection, Dr. Wilbert Chagula Library, Class mark (THS EAF TK2789.S22)
Keywords
Electric motors, electric motors, alternating current, Electric Machinery
Citation
Saanane, B.B (2007) Multi-objective optimisation of core losses in AC rotating electrical machines by use of fuzzy logic.Doctoral dissertation, University of Dar es Salaam, Dar es Salaam.