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Abstract
Advanced Metering Infrastructure (AMI) data from smart electric and gas
meters enables valuable insights for utilities and consumers, but also raises
significant privacy concerns. In California, regulatory decisions (CPUC
D.11-07-056 and D.11-08-045) mandate strict privacy protections for customer
energy usage data, guided by the Fair Information Practice Principles (FIPPs).
We comprehensively explore solutions drawn from data anonymization,
privacy-preserving machine learning (differential privacy and federated
learning), synthetic data generation, and cryptographic techniques (secure
multiparty computation, homomorphic encryption). This allows advanced
analytics, including machine learning models, statistical and econometric
analysis on energy consumption data, to be performed without compromising
individual privacy.
We evaluate each technique's theoretical foundations, effectiveness, and
trade-offs in the context of utility data analytics, and we propose an
integrated architecture that combines these methods to meet real-world needs.
The proposed hybrid architecture is designed to ensure compliance with
California's privacy rules and FIPPs while enabling useful analytics, from
forecasting and personalized insights to academic research and econometrics,
while strictly protecting individual privacy. Mathematical definitions and
derivations are provided where appropriate to demonstrate privacy guarantees
and utility implications rigorously. We include comparative evaluations of the
techniques, an architecture diagram, and flowcharts to illustrate how they work
together in practice. The result is a blueprint for utility data scientists and
engineers to implement privacy-by-design in AMI data handling, supporting both
data-driven innovation and strict regulatory compliance.