研究目的
To improve the efficiency and solution quality of TAN optimization by replacing deterministic search in BILS with micro-differential evolution (DE), resulting in the deBILS algorithm.
研究成果
The deBILS algorithm, incorporating micro-DE for TAN optimization, demonstrates superior performance in both search speed and solution quality compared to traditional BILS, GA, and SS algorithms. It efficiently utilizes historical information for promising search directions, making it a valuable tool for complex structural optimization problems in machine intelligence.
研究不足
The study focuses on binary images after preprocessing, and the effectiveness of deBILS on raw, unprocessed images is not explored. Additionally, the algorithm's performance is tested on a specific set of images, and its generalizability to other types of images or optimization problems is not fully established.
1:Experimental Design and Method Selection:
The study compares the proposed deBILS algorithm with traditional BILS, GA, and SS algorithms on TAN optimization. The deBILS algorithm incorporates micro-DE for improved directional guidance.
2:Sample Selection and Data Sources:
Tests are conducted on ten single target test images and ten more test cases with multiple targets, using a TAN grid size of 15×
3:List of Experimental Equipment and Materials:
A PC with an Intel Core i5-2300 CPU running MATLAB 2013a is used for all experiments.
4:Experimental Procedures and Operational Workflow:
The deBILS algorithm is applied to optimize TANs on test images, comparing its performance in terms of search speed and solution quality against BILS, GA, and SS.
5:Data Analysis Methods:
The performance is evaluated based on TAN energy and true error rate (ER) of the resulted TAN, with statistical comparisons highlighting significant differences.
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