**Abstract**

*Wireless Sensor Networks - Design, Deployment and Applications*

IEEE 19th International Conference on Machine Learning and Applications (ICMLA) 2020 Dec (pending

Whiting D, Tomycz N. Deep learning for differentiating parameter configurations of deep brain stimulation for treating Parkinson's disease incorporating conformal wearable and wireless inertial sensors as an evolution for Network Centric Therapy, Society for Neuroscience Global Connectome: A

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IL 2019 Oct.

**316**

IoT and WSNs are the prime moving force for technology in the current world. WSNs unfold their capacity day by day in almost every aspect of life. IoT enables to integrate the different devices and makes it possible to communicate with each other. It makes life easier and upgrades the application's usage to the next level. The integration of WSNs with IoT will help to reach apical of the usage of applications. The combination of WSNs and IoT will open up new doors in almost all the possible fields however the amalgamation of both the technology needs careful consideration about bringing the both on same level. The IoT is considered a mighty giant with enormous power and capability. On the other side, WSNs are miniature having limited resources but the tremendous capability to penetrate in almost every aspect of life. WSN's limited resources are the main concern while integrating it with the IoT. The integration will make it possible to access the sensor node from any part of the world. It implies that now the sensor node is open for any heterogeneous internet user in the world. It will cause a security issue. Moreover, the topology and addressing of WSNs are different from the normal internet which needs to be addressed during the integrations. And there are other challenges too which we discussed in depth in this chapter.

**Keywords:** WSNs, IoT, integration, security, addressing
