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Identifying the tool-tissue force in robotic laparoscopic surgery using neuro-evolutionary fuzzy systems and a synchronous self-learning hyper level supervisor

机译:使用神经进化模糊系统和同步自学习超水平监控器识别机器人腹腔镜手术中的工具组织力

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摘要

In this paper, two different hybrid intelligent systems are applied to develop practical soft identifiers for modeling the tool-tissue force as well as the resulted maximum local stress in laparoscopic surgery. To conduct the system identification process, a 2D model of an in vivo porcine liver was built for different probing tasks. Based on the simulation, three different geometric features, i.e. maximum deformation angle, maximum deformation depth and width of displacement constraint of the reconstructed shape of the deformed body are extracted. Thereafter, two different fuzzy inference paradigms are proposed for the identification task. The first identifier is an adaptive co-evolutionary fuzzy inference system (ACFIS) which takes advantage of bio-inspired supervisors to be reconciled to the characteristics of the problem at hand. To learn the fuzzy machine, the authors propose a co-evolutionary technique which uses a modified optimizer called scale factor local search differential evolution (SFLSDE) as the core metaheuristic. The concept of co-evolving is implemented through a consequential optimization procedure in which the degree of optimality of the ACFIS architecture is evaluated by sharing the characteristics of both antecedent and consequent parts between two different SFLSDEs. The second identifier is an adaptive neuro-fuzzy inference system (ANFIS) which is based on the use of some well-known neuro computing concepts, i.e. back-propagation learning and synaptic nodal computing, for tuning the construction of the fuzzy identifier. The two proposed techniques are used to identify the force and maximum local stress of tool-tissue. Based on the experiments, the authors have observed that each of the identifiers have their own advantages and disadvantages. However, both ACFIS and ANFIS succeed to identify the model outputs precisely. Moreover, to ascertain the veracity of the derived systems, the authors adopt a Pareto-based hyper-level heuristic approach called synchronous self-learning Pareto strategy (SSLPS). This technique provides the authors with good information regarding the optimum controlling parameters of both ACFIS and ANFIS identifiers.
机译:在本文中,应用了两种不同的混合智能系统来开发实用的软标识符,以对工具组织力以及腹腔镜手术中产生的最大局部应力进行建模。为了进行系统识别过程,针对不同的探测任务建立了体内猪肝的二维模型。基于仿真,提取了三个不同的几何特征,即最大变形角,最大变形深度和变形体的重构形状的位移约束宽度。此后,提出了两种不同的模糊推理范式用于识别任务。第一个标识符是自适应的协同进化模糊推理系统(ACFIS),该系统利用了受生物启发的管理人员来协调当前问题的特征。为了学习模糊机器,作者提出了一种协同进化技术,该技术使用了一种改进的优化器,称为比例因子局部搜索差分演化(SFLSDE)作为核心元启发式算法。协同进化的概念是通过相应的优化程序来实现的,在该程序中,ACFIS体系结构的最佳程度是通过在两个不同的SFLSDE之间共享先行和后续部分的特征来评估的。第二标识符是自适应神经模糊推理系统(ANFIS),其基于使用一些众所周知的神经计算概念(即,反向传播学习和突触节点计算)来调整模糊标识符的构造。提出的两种技术用于识别工具组织的力和最大局部应力。基于实验,作者观察到每个标识符都有其自身的优缺点。但是,ACFIS和ANFIS都可以成功地准确识别模型输出。而且,为了确定派生系统的准确性,作者采用了基于帕累托的超高层启发式方法,称为同步自学习帕累托策略(SSLPS)。该技术为作者提供了有关ACFIS和ANFIS标识符的最佳控制参数的良好信息。

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