Networks Europe Sept-Oct 2016 | Page 27

CFD severely limited in scope. Worse still, they are likely to lead to other decisions that can even degrade overall performance.   Using heat loads One way to improve models is to introduce heat loads into the data hall to simulate the type of workload that's expected. This data can be captured and then applied to the model to identify where it begins to diverge from the captured data. To stay with the racing analogy, this is the equivalent of using a wind tunnel to test aerodynamic components before putting them on a racing car. The use of heat loads is nothing new. An increasing number of companies already use them to test the initial design of the data hall. The problem is that they are not universally used nor are they regularly used during refurbishment. This is where data centre designers are missing the point. It’s not just about the heat loads validating their designs and models, but providing a better baseline and library of designs that can speed up the design of data centres in the future.   All about workload No matter how efficient the design model appears, and how well it has performed under test conditions, it’s only when real workloads are applied that it can be truly validated. This creates a significant challenge for designers. Hardware, software and workloads change over the life of a data hall. This means that a model can be outdated before any hardware has been installed. When hardware changes it’s possible to import the technical data from the vendor to update a model, and this will help to improve the model and the way the data centre is configured. The bigger problem is software and the underlying workloads. An example of the problem is the introduction of virtualisation. Workloads changed from being contained on servers to running anywhere in the data centre. This created the opportunity to move high heat loads to areas where there was adequate cooling. By automating the process it meant that workloads were prioritised for resources rather than heat load balancing. Returning to the motor racing analogy, this is the equivalent of testing the aerodynamic components on the car during a test session. It delivers accurate data as to how the components work under real conditions, which enables designers to further improve their models.   Moving to real-time data There are several sources of data that can be used to help drive models in a live data centre. The key is to take advantage of the tsunami of sensors that have appeared over the last 20 years. These are located inside servers, storage devices, switches, power units, racks and aisles. So what data can be used and how? Using the data from sensors in the racks and aisles will provide information on airflow and air temperature, both hot and cold. This can be used to feed into the model to see where it's predicting heat and help make it more effective with real-time data. If linked to orchestration software, the d