Abstract :
A process model for part assembly, using robotic manipulators, is introduced. Part bringing, in an environment that contains obstacles, is accomplished by combining a neural network control strategy, co-ordinating with a fuzzy optimal process model to bring a part from an initial position to a destination (target) for the purpose of part insertion. Fuzzy set theory, well suited to the management of uncertainty, is introduced to address the uncertainty problem associated with the part-bringing procedure. The degree of uncertainty associated with the part bringing is used as an optimality criterion, or cost function, e.g. minimum fuzzy entropy, for a specific task execution. The proposed technique is applicable not only to a wide range of robotic tasks including pick and place operations, but also to the control of unmanned aircraft or missiles
Keywords :
assembling; fuzzy control; fuzzy set theory; industrial manipulators; intelligent control; neurocontrollers; optimal control; cost function; fuzzy optimal process model; intelligent process model; minimum fuzzy entropy; missiles; neural network control strategy; optimality criterion; part bringing; part insertion; partially unstructured environment; robotic part assembly; uncertainty management; unmanned aircraft;