• 沒有找到結果。

Conclusions and Future Works

7.2 Future Works

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7.2 Future Works 117

7.2 Future Works

This dissertation work presents an important step towards development of a system that does not only monitor air quality but also assists in data analysis, forecast, visualization and other user-centric applications development. Nevertheless, there is still potential for extension of this work.

One research direction would be to predict sensor health that would help in understand the aging of sensors. Sensor failure detection is very important especially when dealing with large scale IoT deployment. This would eventually be beneficial for checking data reliability. Also, it would be interesting to investigate how edge computing might help in improving the IoT sensing frameworks. This approach would help reduce the latency and also the dependence on cloud systems. This can be important for improving the efficiency of the forecast system and reducing the cost associated with data transfer. Another important direction can be investigating the security and privacy aspect of participatory sensing. For the health-optimal route recommendation application, one task would be to add an option that for cars and other vehicles that emit pollution, they could be recommended a route where they do not add to already heavily polluted routes. Another important step would be to implement the algorithm to a mobile application and perform user testing and get a constructive feedback.

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