Speed Control of a Wheelchair Prototype Driven by a DC Motor Through Real EEG Brain Signals

IOP Conference Series: Materials Science and Engineering(2020)

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摘要
For some disabled people, Electroencephalogram (EEG) signals are used to interpret brain thinking to drive machines by creating interface between the human brain and such machines. EEG signals are naturally varied due to human thinking process, and can be manipulated to drive a wheelchair based DC motors in real-time without any muscular efforts. In this paper, EEG signals are used to control DC motors using a Brain Computer Interface (BCI) that includes an EEG sensor headset to capture brain signals. The extracted EEG signals are considered as reference signals and transmitted to a microcontroller via Bluetooth. An intelligent wheelchair (IW) with an EEG sensors is connected to an Arduino, that drives two DC motors, to control movement references to the specific EEG signals. For the proposed IW based EEG, life cycle cost (LCC), over 5 year lifetime, is about 2674$ compared with a manufactured passive wheelchair, which its LCC is 3957$. The experimental tests suggest that the proposed design of IW is efficient and low cost as well as allowing disabled people to more easily control their wheelchairs and to lead independent lives.
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关键词
wheelchair prototype,dc motor,brain
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