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Original Articles

Artificial Neural Network Prediction of Material Removal Rate in Electro Discharge Machining

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Pages 645-672 | Received 26 Apr 2004, Accepted 21 Jun 2004, Published online: 07 Feb 2007

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Surendra Singh, Brijesh Patel, Rajeev Kumar Upadhyay & Nishant K. Singh. (2022) Improvement of process performance of powder mixed electrical discharge machining by optimisation -A Review. Advances in Materials and Processing Technologies 8:3, pages 3074-3104.
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Anil Kumar, Sachin Maheshwari, Chitra Sharma & Naveen Beri. (2010) Research Developments in Additives Mixed Electrical Discharge Machining (AEDM): A State of Art Review. Materials and Manufacturing Processes 25:10, pages 1166-1180.
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K. P. Somashekhar, N. Ramachandran & Jose Mathew. (2010) Optimization of Material Removal Rate in Micro-EDM Using Artificial Neural Network and Genetic Algorithms. Materials and Manufacturing Processes 25:6, pages 467-475.
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Byungwhan Kim, Hwa Jun Lee & Donghwan Kim. (2009) Neural Network Model of Plasma Charging Damage on MOSFET Device. Materials and Manufacturing Processes 24:6, pages 615-618.
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Byungwhan Kim, Gi Tae Kim & Hwa Jun Lee. (2008) Ex Situ Plasma Diagnosis by Recognition of X-Ray Photoelectron Spectroscopy Data Using a Neural Network. Materials and Manufacturing Processes 23:5, pages 528-532.
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DeepakK. Panda & Rajat Kumar Bhoi. (2006) Electro-Discharge Machining–A Qualitative Approach. Materials and Manufacturing Processes 21:8, pages 853-862.
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