Toward Data Center Digital Twins via Knowledge-based Model Calibration and Reduction

Author:

Wang Ruihang1ORCID,Xia Deneng1ORCID,Cao Zhiwei1ORCID,Wen Yonggang1ORCID,Tan Rui1ORCID,Zhou Xin2ORCID

Affiliation:

1. Nanyang Technological University, Singapore

2. Jiangxi Science and Technology Normal University, China

Abstract

Computational fluid dynamics (CFD) models have been widely used for prototyping data centers. Evolving them into high-fidelity and real-time digital twins is desirable for the online operations of data centers. However, CFD models often have unsatisfactory accuracy and high computation overhead. Manually calibrating the CFD model parameters is tedious and labor-intensive. Existing automatic calibration approaches apply heuristics to search the model configurations. However, each search step requires a long-lasting process of repeatedly solving the CFD model, rendering them impractical, especially for complex CFD models. This article presents Kalibre , a knowledge-based neural surrogate approach that calibrates a CFD model by iterating four steps of (i) training a neural surrogate model, (ii) finding the optimal parameters through neural surrogate retraining, (iii) configuring the found parameters back to the CFD model, and (iv) validating the CFD model using sensor-measured data. Thus, the parameter search is offloaded to the lightweight neural surrogate. To speed up Kalibre’s convergence, we incorporate prior knowledge in training data initialization and surrogate architecture design. With about ten hours of computation on a 64-core processor, Kalibre achieves mean absolute errors (MAEs) of 0.57°C and 0.88°C in calibrating the CFD models of two production data halls hosting thousands of servers. To accelerate CFD-based simulation, we further propose Kalibreduce that incorporates the energy balance principle to reduce the order of the calibrated CFD model. Evaluation shows the model reduction only introduces 0.1°C to 0.27°C extra errors while accelerating the CFD-based simulations by thousand times.

Funder

National Natural Science Foundation, China

Jiangxi Education Department

National Research Foundation, Singapore

Energy Research Testbed and Industry Partnership Funding Initiative

Energy Grid (EG) 2.0 programme and its Central Gap Fund

Ministry of Education, Singapore

Nanyang Technologi- cal University, Singapore

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Science Applications,Modeling and Simulation

Reference43 articles.

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