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Smart Meter Privacy by sankar, Rajgopalan, Mohajer, Vincent CSE 898AB Privacy Enhancing Technologies Dr. Murtaza Jadliwala Presented by Viswa Chaitanya Kanakam
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Definition Recent news on Smart Meter Previous Work Proposed Work Related Work Author's Contribution Notations Model Utility and Privacy Metric Privacy Preserving Mapping Utility-Privacy Trade-off Privacy Preserving Spectral water filling Illustrations Conclusion Remark Future Work Presentation Outline
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Smart Grid Smart Meter Load Signature Libraries :- Unique consumption pattern intrinsic to each individual electrical appliance. Definitions
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2012 FBI warns smart meter Hacking may cost Utility companies $400 Million a year. US power grid being hit with increasing Hacking Attacks as Smart Meter Deployment continues Stuxnet-style attack on US smart grid could cost government $1 trillion Recent news about Smart Meter
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Attack is considered to be the possibility of inferring appliance usage from load data with the help of load signature libraries. Solution :- Energy Storage Devices Flaws :- Is detection of usage pattern the only loss what extent proposed solution withstand Only assurance but no guarantees Previous Work
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Goal :- To provide a framework to accommodate both Privacy and Utility Work:- To decouple the collected data from the personal actions of consumer. Model :- A formal framework is designed for smart meter time-series data and metrics for utility and privacy of data. A hidden Markov model is proposed on that describing states of appliances which is in turn modelled as real valued correlated Gaussian random Variables Proposed Work
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Trusted escrow Service Neighbourhood-level aggregation Differential Privacy over aggregate queries NILL to mask NALM Related Work
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Notations:- H k,j – Random Variables. h k,j – Random Variable realizations (observed values). X n – n-length vector. X – Matrix (I - Identity matrix). N(µ n, ∑) – n variable real Gaussian distribution with mean µ n and covariance ∑. (x) + -- max(x,0) I(.;.) – Mutual Information h(.) – Differential Entropy Author's Work
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M be the total number of appliances in the residency Each device has two states (On/Off), so 2 M state appliance are possible at a time instant. S(K) = { 0,1, ….., 2 M-1 } is state variable at k th time instant X(k) is the meter measurement variable at k th time instant. Model
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A Hidden Markov Model(HMM) is observed between the state and measurement X k-1 – S(k) – X(k) forms a Markov chain S(k) – S(k-1) – S k-1 forms a Markov chain HMM is characterized by the following parameters Initial state distribution State transition matrix Conditional distribution
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Observations of HMM in this model reveal that:- State S remains unchanged for a continuous period of time In that time, each appliance that is in ON state generates a sequence of random measurement characteristic of appliance Author assumes that when an appliance is in the ONstate, its power consumption pattern is approximately Gaussian.
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State S can have both continuous and intermittent appliance S = (S i, S c ) G n c (S c ) and G n i (S i ) denote the length n Gaussian distributed time sequence for states S c and S i respectively which are independent of each other. Length n is chosen such that the memory effects of each state are contained within the sequence.
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Measurements in Vector Notation as:- X n (S)= G n c (S c ) + G n i (S i )+ Z n Z n is a Gaussian noise vector The covariance matrix R x of X n (S) is a Toeplitz matrix with autocorrelation entries. {E} n j,k=1 = [R x (|j-k| mod n)] j,k=1 n which is non zero for all k<=m<n This circular n-block correlated sequence is decomposed into n independent Gaussian measurements subject to same distortion and leakage constraints using Discrete Fourier Transform (T is a DFT matrix)
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Data is captured as a sequence of n load measurements and compressed to transmit over finite channel Compressed data should be perturbed in such a way it still holds desired level of fidelity Utility metric proposed is an average distance distortion function between original and perturbed data. Privacy metric measures the difficulty of inferring private information leaked by the appliance state via meter measurements The privacy loss is quantified as a result of revealing perturbed data via the mutual information between the two data sequences Utility and Privacy Metrics
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Hard to transmit the measured data over the limited bandwidth hence mapping is done into a quantized sequence Privacy-preserving mapping also needs to ensure that a minimal amount of information can be inferred about the personal habits of consumer. Encoding :- F E : x n (s) → M = {1,2, ….., 2 n,R } Decoding :- F D : M → x^ n Distortion Leakage Privacy Preserving Mapping
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Utility-privacy trade-off region T is set of all pairs (D,L) to which a coding scheme satisfying the distortion and leakage functions. The classical rate-distortion theory, constraint is on the number M of encoded sequences such that the rate I bits per entry of the sequence is bounded as M ≤ 2 n(R+€). The aim then is to determine the infimum R(D) of all rates that are achievable for a desired distortion D. Minimize the number of correlated sequence leaked from the revealed sequence X ^n This paper focus on leakage constraint and not the rate constraint due to tractability Utility-Privacy Trade-off Region
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If an additional constraint on minimizing the encoding rate is included, the minimal achievable rate for a desired distortion is The revealed measurements leak information about the appliance state which in turn can lead to a significant set of inferences, model focus directly on problem of minimizing the leakage of specific states via the revealed data.
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Suppressing specific appliance signatures requires detection of the appliance states in the meter by using an external algorithm. Intermittent signals are the once that can be the source for revealing personal data, thus aim is to minimize the leakage. Privacy Preserving Spectral Water- filling
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The first term in min function is for the non-negative leakage and the second term is a result of optimization, is lagrangian variable satisfying distortion constraint, it Is viewed as a waterlevel such that only that portion of the spectrum is revealed which is strictly above than this. The minimal Leakage is given as
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Where
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Illustrations It models the continues and intermittent appliance load sequences in Gauss-Markov processes with an auto-correlation function given by The power spectral density of this process is
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The framework proposed allows to quantify the utility –privacy trade-off in smart meter. This model captures dynamic nature of appliance states and smooth continual nature of the measurements via a hidden markov model and Gaussian measures. The distortion acts as a filter in suppressing the intermittent appliance signal i.e. signals which are less than certain threshold Conclusion
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This model focus on only data loss through intermittent appliance signals but did not provide the data loss through power consumption variability by non-intermittent appliances Remark
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Applying the model on measured data to validate whether filter eliminates signatures of intermittent devices to desired degree, Apply and demonstrate the power of these concepts in a practical context Develop a appliance-agnostic privacy-guarantees based on detecting changes in energy patterns that are characteristic of personal habits Future Work
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Questions ?
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Thank You
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