Cancer Detection using Image Processing and Machine …
Cancer Detection using Image Processing and Machine Learning Shweta Suresh Naik Dept. of ISE, Information Technology SDMCET Dharwad, India Dr. Anita Dixit Dept. of ISE, Information Technology SDMCET Dharwad, India. Abstract— Cancer is an irregular extension of cells and one of the regular diseases in India which has lead to 0.3
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Numerical Study of Knife Edge Effects in Flash Riveted ...
www.ijert.orgabout knife edge is due to stress cycles causing fatigue cracks. In the riveting process of machine countersunk, cracks mainly initiated around the rivet holes in the upper skin. In flush fasteners, the influence of rivet head in conjunction with the skin thickness on the stress distribution is still largely ...
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www.ijert.orgfor single phase AC induction motor. It has low cost, high efficiency drive capable of supplying a single phase induction motor with PWM modulated sinusoidal voltage. The circuit operation control by an 8051 family microcontroller[4].The device is aimed at substituting commonly used TRIAC phase angle control drives. ...
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Programmable DC Electronic Load for Testing on-Board ...
www.ijert.orgThe Block diagram of programmable DC electronic load is as show in the Fig.1.The input voltage to device is between 6V-10V.Synchronous buck converter regulates the input voltage to constant voltage of 5V.The bias voltage for timer and Op-Amp are derived from the output of buck regulator .IC555 timer generates the required control signal, the ...
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www.ijert.orgShell & tube type heat exchangers are built of tubes (round or rectangular in general) mounted in shells (cylindrical, rectangular or arbitrary shape). The differences lie mainly in the detailed features of construction and provisions for differential thermal expansion between the tubes and the shell. ...
Performance Analysis of a Heat Recovery Steam …
www.ijert.orgThe Heat Recovery steam Generator is one of the Critical components is the combined cycle (Gas Turbine cycle and Steam Power cycle) and is the most efficient energy conversation system in recent trends. Its function is to recover the waste heat present in the exhaust Gases of the Gas turbine ...
A Resonant Converter Topology for Bidirectional DC DC ...
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www.ijert.orgThe bidirectional dc-dc flyback converters, a very simple structure, but the active switch suffer a high voltage stresses due to the leakage inductance of the transformer.
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