


How IoT sensors and artificial intelligence are revolutionizing smart buildings
Over the past few years, especially in the wake of the COVID-19 pandemic, as expectations for facilities managers have changed and sustainability needs have expanded, building management Faced with constant growth and evolution.
The shift from offices to more hybrid and flexible work environments has changed the way commercial buildings are used, requiring real-time visibility into building usage, occupancy trends and more. The ever-changing construction management landscape demonstrates solutions that quickly adapt to new and flexible environments while improving overall productivity and performance.
Smart Buildings Evaluate your own facilities and improvement opportunities Smart buildings are a growing trend that have the potential to not only streamline operations, but also reduce costs and increase visibility for all. Leveraging technologies such as the Internet of Things (IoT), artificial intelligence (AI), and automation, smart buildings can help building managers streamline operations, increase transparency, and automate traditional operational processes to create seamless processes and efficient management practices that not only benefit Facility managers also benefit their customers. This digitization, combined with an integrated technology stack that leverages such technologies, enables facility managers to automate traditionally cumbersome workflows, ensure evidence of compliance, and meet customer expectations and needs.
Artificial intelligence has been a growing trend in various industries over the past few years, but IoT sensors are newer to the market due to their ability to automate simple tasks and workflows. Provides smart features that work with artificial intelligence to generate workflows and alerts based on processed sensor data. IoT sensors can be placed throughout a facility based on specific needs and respond to physical or environmental inputs such as light, heat or motion. Once input occurs, sensors capture the data, which is then processed and displayed to managers in real time. This data can provide simple status updates, or by integrating with AI, it can trigger necessary workflows or tasks to be completed without human intervention.
For example, in smart buildings, motion or temperature sensors can monitor desk occupancy or meeting space usage, and usage and patterns can help building managers gain insight into trends and patterns in room usage. Determine how to maximize resource utilization based on occupancy and automate workflows to meet occupant needs. In addition to providing facilities and security, monitoring strategies and patterns can help HVAC systems operate more efficiently while maintaining target temperatures within the building. While providing amenities and security, monitoring strategies and models can also help building managers integrate with occupants and measurement capabilities to monitor trends to improve the built environment and increase overall efficiency.
IoT sensors help protect and prioritize resources while helping manage ongoing maintenance by tracking inputs such as room usage. To automate necessary workflows (such as cleaning) when service is required, building managers can use IoT sensors to measure restroom usage and clean as needed, automatically sending cleaning alerts once certain usage thresholds are reached. This eliminates the need for strict cleaning schedules while still maintaining customer expectations for cleanliness.
While AI-connected systems are not new to building management, the ability to integrate and leverage all IoT data, including sensor input, is.
To ensure complete integration of the entire system it is vital that all data is included in reports and dashboards and incorporated into any decision-making. By bringing sensors into facility systems and pushing data from them through artificial intelligence, management can be established to automatically generate jobs and workflows based on real-world environmental inputs, while monitoring compliance and enforcing necessary actions.
Artificial intelligence and IoT sensors can streamline operations, automate workflows and increase efficiency, but at the heart of smart buildings is data.
By leveraging process management applications, building managers can not only integrate an entire IoT system but also visualize insights from that system, providing complete transparency into their operations. With custom dashboards that update in real time, building managers can quickly assess the status of their facilities, identify the highest priority needs first, and predict future problem areas. With time-stamped insights and customizable templates, construction managers can also oversee a bird’s-eye view of compliance with insights into capabilities and evidence for each unique work process.
As the needs of construction management continue to change and evolve over time, the technology and solutions used to support them and their output should change with them.
Smart buildings that leverage integrated systems and technologies such as IoT sensors and artificial intelligence can meet these needs while helping management cut costs and improve efficiencies across the board. With enhanced operational visibility and streamlined workflows and processes, facility managers can rest easy knowing their facilities remain compliant, efficient and effective in meeting the ever-changing needs of their customers.
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