Design, Simulation, Building, and Testing of a Microcontroller-Based Automatic Drowsiness Detection, Vehicle Braking, and Alert System

Bezon Dey Tushar, Tarifuzzaman Riyad, Quazi Reshoan Yazdi, Jariatun Islam, Prof. Dr. Engr. Muhibul Haque Bhuyan
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Abstract

Aims: The premier practical aspect of this research drive is to propose, build, simulate, and evaluate an Arduino-built automatic vehicle driver drowsiness detection and alert system. Study Design: The pivotal role of a reliable braking system in vehicular safety cannot be overstated, particularly considering the escalating frequency of traffic accidents, notably prevalent in Indonesia where human factors take center stage as the primary accident catalyst. An insightful poll underscores physical fatigue or drowsiness while driving as the foremost concern. Acknowledging the nuanced disparities between conventional air systems and electric systems, this research strategically directs its attention toward crafting a new system characteristic that mirrors the efficiency of the existing systems. Place and Period of Study: The research action engaged by the authors in a bunch of two students under the command of a professor as a part of one of his course capstone projects for the Bachelor of Science in Electrical and Electronic Engineering degree at the American International University Bangladesh (AIUB), Dhaka, Bangladesh. The authors performed their investigative tasks at AIUB from June 2023 to January 2024. Methodology: Recognizing the imperative to fortify vehicular safety, the integration of artificial intelligence emerges as a vital solution to assist drivers in ensuring the safety of individuals both within and outside the vehicle. This focused study, tailored specifically for Electric Vehicles (EVs), centers on the innovative application of object and distance identification methodologies to provide a comprehensive braking action indicator. Leveraging a minicomputer and a sophisticated neural network approach, images captured by a stereo camera undergo meticulous machine learning processes. This facilitates the precise categorization and measurement of distances between objects, with subsequent priority decisions determining the optimal degree of braking action. Employing an intelligent methodology, specifically fuzzy logic, the study demonstrates a successful outcome by constructing a curve while concurrently enhancing the dynamics of the pre-existing system. Moreover, a finely tuned Pulse Width Modulation (PWM) signal for braking, lasting 10 milliseconds, is intricately devised based on the study's discerning results. Results: The system is simulated in Proteus and tested in real time to check its functionality. The outcomes of the test showed that the system can produce the appropriate signals based on the detection of any kind of driver’s drowsiness and can stop the car. Conclusion: This comprehensive approach ensures the seamless replacement of components while concurrently elevating the overall performance of the braking system
设计、模拟、构建和测试基于微控制器的瞌睡自动检测、车辆制动和警报系统
目标:这项研究的首要实践内容是提出、构建、模拟和评估一个由 Arduino 构建的汽车驾驶员昏昏欲睡自动检测和警报系统。研究设计:可靠的制动系统对车辆安全的关键作用怎么强调都不为过,特别是考虑到交通事故的频率不断上升,尤其是在印尼,人为因素已成为事故的主要催化剂。一项颇具洞察力的民意调查强调,驾驶时的身体疲劳或昏昏欲睡是最令人担忧的问题。认识到传统空气系统与电动系统之间存在的细微差别,本研究将注意力战略性地集中在打造一种新的系统特性上,以反映现有系统的效率。研究地点和时间:作为孟加拉国达卡孟加拉美国国际大学(AIUB)电气与电子工程理学学士学位课程毕业设计的一部分,作者与两名学生在一名教授的指导下开展了研究行动。作者于 2023 年 6 月至 2024 年 1 月在 AIUB 执行调查任务。研究方法:认识到加强车辆安全的必要性,人工智能的集成成为协助驾驶员确保车内外人员安全的重要解决方案。这项专为电动汽车(EV)量身定制的重点研究集中于物体和距离识别方法的创新应用,以提供全面的制动操作指示器。利用微型计算机和复杂的神经网络方法,对立体摄像机捕捉到的图像进行细致的机器学习处理。这有助于对物体之间的距离进行精确的分类和测量,并根据随后的优先级决定制动动作的最佳程度。这项研究采用了一种智能方法,特别是模糊逻辑,在构建曲线的同时增强了原有系统的动态性能,从而取得了成功。此外,还根据研究的辨别结果,精心设计了一个持续 10 毫秒的微调脉冲宽度调制(PWM)制动信号。结果:该系统在 Proteus 中进行了模拟,并进行了实时测试,以检查其功能。测试结果表明,该系统可以根据检测到的驾驶员瞌睡情况发出适当的信号,并能让汽车停下来。结论这种综合方法可确保无缝更换部件,同时提高制动系统的整体性能。
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