Monte-Carlo value analysis of High-Throughput Satellites: Value levers, tradeoffs, and implications for operators and investors

High-Throughput Satellites (HTS) are a distinctive class of communication satellites that provide significantly more throughput per allocated bandwidth than traditional wide-beam communication satellites. They are the proverbial wave of creative disruption in the space industry and are poised to dis...

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Veröffentlicht in:PloS one 2019-09, Vol.14 (9), p.e0222133-e0222133
Hauptverfasser: Geng, Fan, Gomez, David B, Guan, Yue, Saleh, Joseph Homer
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Gomez, David B
Guan, Yue
Saleh, Joseph Homer
description High-Throughput Satellites (HTS) are a distinctive class of communication satellites that provide significantly more throughput per allocated bandwidth than traditional wide-beam communication satellites. They are the proverbial wave of creative disruption in the space industry and are poised to disrupt the communication market in significant ways. The objective of this work is to develop a decision-analytic framework for assessing the value of High-Throughput Satellites and to provide meaningful results of the value of such systems under realistic design, operational, and market conditions. We develop the cost and revenue models of HTS. To build the revenue model, we develop a hybrid data-driven and scenario-based load factor model that combines historical data based on financial records from current HTS operators with extrapolations based on best-, nominal-, and worst-case scenarios. We then integrate the cost and revenue models within a stochastic simulation environment and perform Monte-Carlo analysis of the net present value (NPV) of HTS. One important result is that a medium-sized HTS significantly outperforms a roughly equivalent traditional wide-beam satellite, even under the worst-case loading scenario. Another important result, here identified and quantified, is the tradeoff between the average revenue per user (ARPU) and average loading of the satellite and how it is mediated by the downlink speed provided to consumers. This result can be used in different ways, for example, by helping define the boundaries of what is competitively achievable in terms of ARPU and downlink speed offerings. The implications of these results are that they delineate the pathways to financial failure and the boundaries beyond which an HTS will be value-negative, or alternatively, the asymptotic minimum values for an HTS to be value-positive.
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subjects Aerospace engineering
Analysis
Biology and Life Sciences
Boundaries
Communication satellites
Communications satellites
Computer simulation
Connectivity
Decision analysis
Decision Making
Decision trees
Disruption
Economic conditions
Engineering and Technology
Internet
Investments
Markets
Models, Economic
Monte Carlo Method
Monte Carlo methods
Monte Carlo simulation
Online data bases
Operators
Physical Sciences
Revenue
Satellites
Satellites (Spacecraft)
Social Sciences
Spacecraft - classification
Spacecraft - economics
Stochasticity
Telecommunications equipment
Tradeoffs
Valuation
Value (Economics)
Value analysis
Wireless access points
title Monte-Carlo value analysis of High-Throughput Satellites: Value levers, tradeoffs, and implications for operators and investors
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