October 30, 2024
Breaking Through the Noise: Enhancing Acoustic Leak Detection With Analytics
The Insider Blog / 5 min read
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October 30, 2024
The Insider Blog / 5 min read
Advanced analytics has further improved acoustic leak detection accuracy. By integrating analytic with acoustic leak detection, water utilities can heighten the accuracy of these systems to quickly—and correctly—identify and locate leaks, providing valuable insight when it comes to the effective management and maintenance of the distribution network.
The generally accepted rate of accuracy for is around 70%. But what exactly does that mean? Accuracy in leak detection takes several factors into consideration:
Reliability. "Noise" in the water distribution system, such as valves turning on and off and traffic above the pipe, can interfere with detecting leaks and cause false positives. The more accurate the system, the better it can distinguish the acoustic profile of an actual leak from other sounds. This means more reliable identification of leaks, which reduces time and money wasted digging up pipes for nothing. In addition to being costly, misidentified leaks are also frustrating for utility managers and operators—and can damage their trust in the system itself.
Repeatability. When two different sensors indicate the presence of the same leak, it increases confidence in the result and the system at large.
Precision. Pinpointing the location of a leak is just as important as distinguishing it from noise. A system that can identify the presence of a leak but consistently misjudges its location by 50 to 100 yards will, like a false positive, lead to excess digging, wasted operator time and increased cost as crews dig up more and more pipe in search of the true source.
A typical leak detection system relies on interpreting noise profiles commonly associated with leaks. Analytics takes this power to the next level in several ways:
Analytics can distinguish between true leak sounds and background noise (e.g., traffic, machinery, or water flow) by analyzing the frequency and amplitude of sounds over time. This reduces false positives.
Advanced algorithms learn to recognize the unique acoustic signatures of different types of leaks in different environments. By comparing measured acoustic data to known leak profiles, analytics help detect leaks more reliably.
Although there can be occasional inaccuracies when first starting out with leak detection analytics, the system learns over time. As mistakes are flagged, the system adapts, making increasingly accurate determinations as the algorithm matures.
In addition to sound profiles, analytics can incorporate other parameters like flow rates, , transient events and network information, such as pipe material characteristics. By correlating these additional data points, the software can more confidently identify leaks and their locations.
Not all leaks pop up overnight; most happen gradually. Analytics can track changes in acoustic patterns over time, catching slow-developing leaks that might otherwise go unnoticed, thus improving early detection.
Clearly, analytics are a powerful aid to acoustic leak detection, but analytics alone are not enough. Utilities should take these additional key steps to ensure the accuracy of the system:
The integration of advanced analytics can propel acoustic leak detection systems to another level. By leveraging noise filtering, pattern recognition and comprehensive data analysis, utilities can improve their ability to identify and locate leaks, minimizing NRW and reducing operational costs in the process. With a focus on accurate data input, strategic sensor placement and collaboration with technology vendors, water utilities can harness these supercharged systems to better manage their distribution networks.
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Customer Care representatives are available by phone Monday–Friday, from 9am–5pm CST.