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Suhas Diggavi

Researcher at University of California, Los Angeles

Publications -  444
Citations -  13678

Suhas Diggavi is an academic researcher from University of California, Los Angeles. The author has contributed to research in topics: Communication channel & Wireless network. The author has an hindex of 52, co-authored 428 publications receiving 12467 citations. Previous affiliations of Suhas Diggavi include École Polytechnique & AT&T.

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Secure Estimation and Control for Cyber-Physical Systems Under Adversarial Attacks

TL;DR: A new simple characterization of the maximum number of attacks that can be detected and corrected as a function of the pair (A,C) of the system is given and it is shown that it is impossible to accurately reconstruct the state of a system if more than half the sensors are attacked.
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Wireless Network Information Flow: A Deterministic Approach

TL;DR: An exact characterization of the capacity of a network with nodes connected by deterministic channels is obtained, a natural generalization of the celebrated max-flow min-cut theorem for wired networks.
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Wireless Network Information Flow: A Deterministic Approach

TL;DR: In this paper, a deterministic channel model was proposed for Gaussian networks with a single source and a single destination and an arbitrary number of relay nodes, and a quantize-map-and-forward scheme was proposed.
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Intercarrier interference in MIMO OFDM

TL;DR: This paper develops a model for multicarrier transmission over time-varying channels and focuses particularly on multiple-input multiple output (MIMO) orthogonal frequency division multiplexing (OFDM), and proposes a time-domain approach to channel estimation.
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The worst additive noise under a covariance constraint

TL;DR: The problem becomes one of extremizing the mutual information over all noise processes with covariances satisfying the correlation constraints R/sub 0/,..., R/ sub p/ for high signal powers, the worst additive noise is Gauss-Markov of order p as expected.