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Performance Analysis of Extracted Rule-Base Multivariable Type-2 Self-Organizing Fuzzy Logic Controller Applied to Anesthesia

机译:提取的基于规则的多元二型自组织模糊逻辑控制器在麻醉中的性能分析

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We compare type-1 and type-2 self-organizing fuzzy logic controller (SOFLC) using expert initialized and pretrained extracted rule-bases applied to automatic control of anaesthesia during surgery. We perform experimental simulations using a nonfixed patient model and signal noise to account for environmental and patient drug interaction uncertainties. The simulations evaluate the performance of the SOFLCs in their ability to control anesthetic delivery rates for maintaining desired physiological set points for muscle relaxation and blood pressure during a multistage surgical procedure. The performances of the SOFLCs are evaluated by measuring the steady state errors and control stabilities which indicate the accuracy and precision of control task. Two sets of comparisons based on using expert derived and extracted rule-bases are implemented as Wilcoxon signed-rank tests. Results indicate that type-2 SOFLCs outperform type-1 SOFLC while handling the various sources of uncertainties. SOFLCs using the extracted rules are also shown to outperform those using expert derived rules in terms of improved control stability.
机译:我们比较了使用专家初始化和预先训练的提取规则库应用于外科手术中麻醉的自动控制的1型和2型自组织模糊逻辑控制器(SOFLC)。我们使用非固定的患者模型和信号噪声进行实验模拟,以解决环境和患者药物相互作用的不确定性。该模拟评估了在多阶段外科手术过程中,SOFLC在控制麻醉剂输送速率以维持所需的肌肉松弛和血压生理设定值方面的性能。通过测量稳态误差和控制稳定性来评估SOFLC的性能,这些误差和控制稳定性表明控制任务的准确性和精确性。基于使用专家导出和提取的规则库的两组比较被实现为Wilcoxon符号秩检验。结果表明,在处理各种不确定性来源时,2型SOFLC优于1型SOFLC。在改善控制稳定性方面,使用提取规则的SOFLC还显示出优于使用专家派生规则的SOFLC。

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