@inproceedings { , title = {Application of machine learning towards design optimisation of bio-inspired transfemoral prosthetic socket for robotic leg test rig}, abstract = {In the past century many medical advancements in prosthetics have been achieved, however, discomfort in prosthetic socket remains one of the toughest challenges faced by both amputees and prosthetists. Wearing an uncomfortable socket can lead to users discontinuing use of their socket and subsequently reducing their long-term mobility; negatively impact their psychological health; and prolong rehabilitation. This paper continues the research conducted in earlier publications [1], [2], which introduced the concept of an automated ISO standard robotic testing rig to test a full artificial limb prosthesis (a bio-inspired transfemoral prosthetic socket attached to robotic prosthetic joints and an ankle joint). This paper presents an automated method of designing the bio-inspired socket using artificial intelligence to reduce discomfort and the design time of new or existing full artificial lower limbs using qualitative and quantitative data. The socket will be tested in a gait simulation shown in the figure 7, to safely achieve desirable walking velocities, step length, safety and comfort while consequentially reducing the physical testing on patients and consequentially reduce physical testing on patients.}, conference = {2020 20th International Conference on Control, Automation and Systems (ICCAS 2020)}, publicationstatus = {Accepted}, url = {https://uwe-repository.worktribe.com/output/6690249}, keyword = {Biomedical engineering, Prosthetics, Robotics and Automation}, author = {Sabau, Panashe and Jie Chong, Jun and Jafari, Aghil and Agrawal, Subham and Semasinghe, Chathura and Etoundi, Appolinaire} }