Fuzzy evaluation algorithm based on adaptive dual optimization
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School of Information Engineering, Nanchang University, Nanchang 330031, China

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TP391.4;TN911.72

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    Abstract:

    To address challenges including rule optimization difficulty, complex parameter tuning, and poor multi-scenario adaptability in existing fuzzy logic evaluation methods for complex industrial applications, this paper proposes an intelligent assessment system based on double-optimized fuzzy inference. First, a double optimization fuzzy inference system is designed, integrating fuzzy entropy-guided rule generation with fuzzy gradient collaborative descent to alternately optimize model structure and parameters, coordinated dynamically by an adaptive optimization scheduler. Second, a multi-scale fuzzy feature extraction network and adaptive fuzzy feature fusion mechanism are constructed, where the former extracts multi-granularity fuzzy features through parallel multi-scale branches while the latter achieves intelligent feature fusion via fuzzy channel-spatial co-attention. Finally, a dynamic fuzzy weighting allocation is proposed, employing a scene-aware weight generation network to dynamically adjust fuzzy rule weights based on input features. Validated in natural gas pipeline risk assessment and electrical equipment identification scenarios, experimental results demonstrate 95.83% assessment accuracy,for pipelines, and 96.54% accuracy with 96.32% F1-score for equipment identification. Compared to conventional fuzzy logic and deep learning methods, the proposed approach significantly enhances evaluation accuracy and generalization capabilities.

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  • Received:
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  • Online: June 08,2026
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