首页|Ant Lion Optimizer (ALO) algorithm for machinability assessment during Milling of polymer composites modified by zero-dimensional carbon nano onions (0D-CNOs)

Ant Lion Optimizer (ALO) algorithm for machinability assessment during Milling of polymer composites modified by zero-dimensional carbon nano onions (0D-CNOs)

扫码查看
This article highlights a hybrid methodology of Grey theory and the Ant Lion Optimizer algorithm (Grey-ALO). The proposed module aggregated the multiple responses such as Cutting force (Fc) and Surface roughness (SRa) into a single objective function. The effect of varying constraints, namely, nano-filler content (CNO Wt.%), cutting speed (S), feed (F) and depth of Cut (D), is examined using Taguchi experimental design. The optimal condition from the Grey-ALO hybrid module are found as W3-S3-F1-D1, i.e., 1.5 wt.% CNO, Spindle Speed at 1500 rpm, Feed at 50 mm/min, and 1 mm of cutting depth. The validation test reveals that the overall assessment values significantly improved from 0.9136 to 0.9156, which indicates the improved prediction performance of ALO with 0.2189% error. The finding confirms that the feed rate and weight% of CNOs are the highly influencing factor for Milling performances. It can be recommended to the manufacturing sector for quality and production control.

CNOPolymersMillingGreyAnt lionPROCESS PARAMETERSSURFACE QUALITYCUTTING FORCEMACHINING PARAMETERSGRAPHENEDELAMINATIONPERFORMANCENANOTUBESBEHAVIORGAS

Kesarwani, Shivi、Verma, Rajesh Kumar

展开 >

Madan Mohan Malaviya Univ Technol

2022

Measurement

Measurement

SCI
ISSN:0263-2241
年,卷(期):2022.187
  • 8
  • 63