TY - JOUR T1 - The Effect of the Age in using the Brain-Machine Interface TT - Beyin Makine Arayüzü kullanımında Yaşın Etkisi AU - Alkış, Mehmet Eşref AU - Koç, Hüseyin PY - 2019 DA - December DO - 10.18586/msufbd.598621 JF - Mus Alparslan University Journal of Science JO - MAUN Fen Bil. Dergi. PB - Muş Alparslan Üniversitesi WT - DergiPark SN - 2147-7930 SP - 683 EP - 687 VL - 7 IS - 2 LA - en AB - BrainMachine Interface (BMI) especially used for disabled people and militaryservices. However, in the literature review, no study was detected on therelationship between the age of the person using the device and the performanceof it. The aim of this study is to detect whether age is important incontrolling a robot using BMI or in which age range this control is moreefficient. The study was carried out with 45 healthy male subjects (age range:7-60). The focusing and activating time of each subject was recorded and analysed.The analysis results showed that this time was the shortest in children and thelongest in adults. The study results indicated that the time to focus andactivate the device increased in parallel with the age, and hence, the childrenand the young were much better at controlling or activating an external devicethrough BMI. KW - Brain Machine Interface (BMI) KW - EEG KW - Neurosky Mindwave KW - robot N2 - Her deneğinodaklanma ve aracı harekete geçirme süreleri kayıt altına alınarak analizedildi. Analiz sonuçları, bu süreninçocuklarda en kısa, yetişkinlerde ise en uzun olduğunu göstermiştir. Çalışmamızın sonuçları, yaşla birlikte odaklanıp aracı harekete geçirme süresinin arttığını ve bundan dolayı yetişkinleregöre çocuklar ve gençler BMI ile harici cihazları ve robotları kontrol etmedeveya çalıştırmada daha başarılı olabileceklerini göstermektedir.sağlıklı erkek denek ile yapıldı.(7-60 yaş aralığı) Çalışma, 45 .Beyin Makine Arayüzü (BMI), özellikle engelliinsanlar ve askeri hizmetler için kullanılmaktadır. Fakat yapılan literatür taramasında cihazı kullanan kişinin yaşı ilecihazdan alınan verim arasında herhangi bir çalışmaya rastlanmamıştır. Bu araştırmanın amacı, BMI kullanılarak bir robotkontrol edilirken cihazı kullanan kişinin yaşının önemi ve hangi yaş grubundabu kontrolün daha verimli yapılabildiğini belirlemektir CR - Dogan A., Calp M.H., Arı E.M., Ozkose H.A. Research on brain- computer interfaces in the scope of human-computer interaction: Properties and working principle, Management information journal. 1:1-10, 2015. CR - Nicolas-Alonso L.F., Gomez-Gil J. 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