%0 Journal Article %T Neural-Based Cuckoo Search of Employee Health and Safety (HS) %A Koffka Khan %A Ashok Sahai %J International Journal of Intelligent Systems and Applications %D 2013 %I MECS Publisher %X A study using the cuckoo search algorithm to evaluate the effects of using computer-aided workstations on employee health and safety (HS) is conducted. We collected data for HS risk on employees at their workplaces, analyzed the data and proposed corrective measures applying our methodology. It includes a checklist with nine HS dimensions: work organization, displays, input devices, furniture, work space, environment, software, health hazards and satisfaction. By the checklist, data on HS risk factors are collected. For the calculation of an HS risk index a neural-swarm cuckoo search (NSCS) algorithm has been employed. Based on the HS risk index, IHS four groups of HS risk severity are determined: low, moderate, high and extreme HS risk. By this index HS problems are allocated and corrective measures can be applied. This approach is illustrated and validated by a case study. An important advantage of the approach is its easy use and HS index methodology speedily pointing out individual employee specific HS risk. %K Health and Safety %K Risk %K Employee %K Checklist %K Neural-Swarm %K Cuckoo Search Algorithm %U http://www.mecs-press.org/ijisa/ijisa-v5-n2/v5n2-9.html