The Internet of Things (IoT) is leading today's digital transformation. In this context, this study provides a description of the attacks against IIoT systems, as well as a thorough analysis of the solutions for these attacks, as they have been proposed in the most recent literature. In this framework, given that the protection of industrial equipment is a requirement inextricably linked to technological developments and the use of the IoT, it is important to identify the major vulnerabilities and the associated risks and threats and to suggest the most appropriate countermeasures. At the same time taking into account the heterogeneity of the systems included in the IIoT ecosystem and the non-institutionalized interoperability in terms of hardware and software, serious issues arise as to how to secure these systems. In today's Industrial Internet of Things (IIoT) environment, where different systems interact with the physical world, the state proposed by the Industry 4.0 standards can lead to escalating vulnerabilities, especially when these systems receive data streams from multiple intermediaries, requiring multilevel security approaches, in addition to link encryption. It also elucidates some open issues for WSNs/IoT networks that can be solved using these approaches. This paper gives a lucid comparison of many state-of-the-art optimization algorithms and descriptive and statistical analysis for discussed issues and algorithms associated with them. The paper discusses the advantages, limitations, effects of these methods on various WSN techniques like topology, coverage, localization, network and node connectivity, routing, clustering, cluster head selection, cross-layer issues, intrusion detection, etc. It also gives a brief description of the usage of various machine learning techniques in WSNs from 2002 till 2020. The paper gives an extensive survey on various optimization methods employed to solve many WSN issues from 2005 till 2020. So, there is a need to introduce optimization in such cases. Some of the applications like target tracking, congestion control, and many more, do not give desired results even after applying the machine learning techniques. But machine learning approaches also cannot solve all the problems in WSN solely. To conquer the limitations of traditional WSN algorithms, machine learning has been introduced in wireless technology. So, they suffer from a trade-off between various QoS parameters like network lifetime, energy efficiency, and others. The traditional WSN algorithms are programmed for fixed parameters without any touch of Artificial Intelligence as well as the optimization technique. The scalability, costeffectiveness, and self-configuring nature of WSN make it the fittest technology for many network designs and scenarios. Since the last decade, wireless sensor network (WSN) and Internet of Things (IoT) has proved itself a versatile technology in many real-time applications.
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