Power Control for Wireless VBR Video Streaming: From Optimization to Reinforcement Learning

03/31/2019
by   Chuang Ye, et al.
0

In this paper, we investigate the problem of power control for streaming variable bit rate (VBR) videos over wireless links. A system model involving a transmitter (e.g., a base station) that sends VBR video data to a receiver (e.g., a mobile user) equipped with a playout buffer is adopted, as used in dynamic adaptive streaming video applications. In this setting, we analyze power control policies considering the following two objectives: 1) the minimization of the transmit power consumption, and 2) the minimization of the transmission completion time of the communication session. In order to play the video without interruptions, the power control policy should also satisfy the requirement that the VBR video data is delivered to the mobile user without causing playout buffer underflow or overflows. A directional water-filling algorithm, which provides a simple and concise interpretation of the necessary optimality conditions, is identified as the optimal offline policy. Following this, two online policies are proposed for power control based on channel side information (CSI) prediction within a short time window. Dynamic programming is employed to implement the optimal offline and the initial online power control policies that minimize the transmit power consumption in the communication session. Subsequently, reinforcement learning (RL) based approach is employed for the second online power control policy. Via simulation results, we show that the optimal offline power control policy that minimizes the overall power consumption leads to substantial energy savings compared to the strategy of minimizing the time duration of video streaming. We also demonstrate that the RL algorithm performs better than the dynamic programming based online grouped water-filling (GWF) strategy unless the channel is highly correlated.

READ FULL TEXT

page 1

page 13

research
07/15/2021

NeuSaver: Neural Adaptive Power Consumption Optimization for Mobile Video Streaming

Video streaming services strive to support high-quality videos at higher...
research
02/14/2018

Power Control and Mode Selection for VBR Video Streaming in D2D Networks

In this paper, we investigate the problem of power control for streaming...
research
03/21/2020

Accelerating Deep Reinforcement Learning With the Aid of a Partial Model: Power-Efficient Predictive Video Streaming

Predictive power allocation is conceived for power-efficient video strea...
research
10/16/2016

Power Control for Packet Streaming with Head-of-Line Deadlines

We consider a mathematical model for streaming media packets (as the mot...
research
10/12/2021

Delay-Sensitive and Power-Efficient Quality Control of Dynamic Video Streaming using Adaptive Super-Resolution

In a decade, the adaptive quality control of video streaming and the sup...
research
09/26/2019

A Simulation of UAV Power Optimization via Reinforcement Learning

This paper demonstrates a reinforcement learning approach to the optimiz...

Please sign up or login with your details

Forgot password? Click here to reset