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Particle Swarm Optimized Autonomous Learning Fuzzy System

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Figure

Fig. 1: System structure of ALMMo*.
Fig. 2: Flowchart of ALMMo* learning process.
Fig. 3: Flowchart of PSO-based EIS optimization.
Fig. 4: Convergence curves of proposed optimization algo- algo-rithm.
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