The construction sector is known for its perennial pursuit of efficiency, quality, and safety. In recent years, one of the tools the sector has started leveraging to achieve these goals is predictive maintenance (PM), specifically the implementation of artificial intelligence (AI) within this practice. This approach, combined with continuous advancements in AI, is revolutionizing the construction industry, promising substantial gains in operational efficiency and cost savings. However, with these developments come an array of cybersecurity threats and complex legal and regulatory challenges that must be addressed. Part 1 of this two-part series discusses the role of PM in the construction sector, and Part 2 goes deeper on the cybersecurity and vulnerabilities relating to PM’s use in the sector.

The Role of PM in the Construction Sector

At its core, PM in the construction industry relies on data-driven insights to anticipate potential equipment failures, allowing proactive measures to be taken that prevent significant downtime or exorbitant repair costs. This principle is applied across a diverse array of machinery and equipment, from colossal cranes and bulldozers to intricate electrical systems and HVAC units.

Critical to this innovative process is AI technology, which is employed to scrutinize vast volumes of data gathered from Internet of Things (IoT) sensors integrated into the machinery. Such an approach starkly contrasts with conventional maintenance practices, which tend to be reactive rather than proactive. The advent of AI-enabled PM can revolutionize this paradigm, enabling construction companies to minimize downtime, enhance safety standards, and effectuate considerable cost savings.

For instance, the integration of worker-generated data from wearable devices introduces another layer of complexity and sophistication, significantly expanding the scope of data being analyzed. These wearable devices precisely record a variety of parameters, including physical exertion levels, heart rate, and environmental exposure information, which directly pertain to an individual’s private health and personal details. Alongside machinery-related data, the physiological and environmental metrics gathered by these wearables are continuously fed into the AI system, bolstering its predictive capabilities. This intricate data, when collected and analyzed, yields invaluable insights into the conditions under which machinery operates. In certain instances, these observations can even serve as an early warning system for potential equipment issues. For instance, consistently high stress levels indicated by a worker’s wearable device while operating a specific piece of equipment could suggest an underlying machine problem that needs to be addressed.

In another use case, consider an AI-driven PM system processing vibration data from a crane’s motor. By applying machine learning to historical patterns, the system can deduce that a specific bearing is likely to malfunction within a certain timeframe. The alert generated by this prediction isn’t based solely on machinery data; it can also incorporate data from the crane operator’s wearable device, revealing elevated stress levels as the bearing begins to fail. This timely alert empowers the maintenance team to rectify the issue before it escalates into a significant breakdown or, even more detrimentally, a safety incident.

Risks of Predictive Maintenance

The rise in PM adoption simultaneously escalates the potential cybersecurity threats. The high volume of data transferred and stored, coupled with an increasing risk of data breaches and cyber-attacks, brings about grave concerns. Hackers could infiltrate PM systems, steal sensitive data, cause disruption, or manipulate the data fed into AI systems to yield incorrect predictions causing substantial harm. IoT devices, which act as the primary data sources for AI-driven maintenance systems, also present considerable cybersecurity vulnerabilities if not appropriately secured. Despite being invaluable for PM, these devices, ranging from simple machinery sensors to sophisticated wearables, have several weak points due to their inherent design and function.

PM users also face complicated new questions of privacy, liability, and compliance with industry-specific regulations. Ownership of the data that AI systems train on is a site of intense legal debate; regulations such as the EU’s General Data Protection Regulation (GDPR) and the California Privacy Rights Act (CPRA) impose penalties for failing to properly anonymize and manage data. The question of liability in the case of an accident, and of compliance with construction-specific regulations, will also be key.

The Future of PM in Construction

Looking ahead, the use of AI in PM is expected to become even more sophisticated and widespread. The continuing development of AI technologies, coupled with the growth of IoT devices and the rollout of high-speed 5G and 6G networks, will facilitate the collection and analysis of even larger data volume, leading to even more accurate and timely predictions.

Furthermore, as AI systems become more capable of learning and adapting, they will increasingly be able to optimize their predictions and recommendations over time based on feedback and additional data. We can also expect to see increased integration between PM systems and other technological trends in construction, such as digital twins and augmented reality. For instance, a digital twin of a construction site could include real-time data on the status of various pieces of equipment and AR devices could be used to visualize potential issues and guide maintenance work.

PM, powered by AI, holds immense promise for the construction industry. It has the potential to greatly increase efficiency, reduce costs, and improve safety. However, it also brings with it significant cybersecurity threats and legal and regulatory challenges. As the industry continues to embrace this technology, it will be crucial to address these issues, striking a balance between innovation and security, compliance, and liability.

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Photo of Sinan Pismisoglu Sinan Pismisoglu

Sinan Pismisoglu advises clients on product development, privacy and security compliance, AI ethics, SaaS contracting, Big Data, data licensing and ownership, supply chain and vendor management, and incident preparedness and response. He solves complex cybersecurity, information security, compliance, and operational issues beginning with…

Sinan Pismisoglu advises clients on product development, privacy and security compliance, AI ethics, SaaS contracting, Big Data, data licensing and ownership, supply chain and vendor management, and incident preparedness and response. He solves complex cybersecurity, information security, compliance, and operational issues beginning with early planning and prevention through detection, remediation, and crisis management. Sinan collaborates with engineering teams to create compliance-integrated risk management frameworks, governance, and ethics programs for emerging technologies such as AI/ML, cybersecurity, IoT, and cloud models.