Prediction of Machined surface Roughness A Review
نویسندگان
چکیده
Recent advances in manufacturing technology and industrial automation require efficient and quality oriented machining practices. Performance, cost effectiveness and reliability of the work piece depends on the quality of surface roughness and can be measured with contact (conventional) and non contact (advanced) methods. Various measurement techniques starting from stylus to machine vision are analyzed and compared. Keywords—Surface Roughness ; measurement methods ; machine vision.
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