SlideShare ist ein Scribd-Unternehmen logo
1 von 7
Downloaden Sie, um offline zu lesen
Lessons learned from market
forecasting




X&Y Partners
December 2012
www.thisisxy.com




                              Romeu Gaspar
                              romeu.gaspar@thisisxy.com
                              +44 (20) 3239 5245
Lessons learned from market forecasting




 “
             Forecasting is about the journey, not the
             destination: what you learn in the process will be
             more useful than the forecast itself.



We are often asked to make market forecasts, so we decided to go back to some of
our older forecasts and see how well we fared. We found that most forecasts had a
fair 15-20% deviation from the actual figures (Exhibit 1). There were however
outliers: on the one hand, we overestimated the global installed capacity of wave
energy by an order of magnitude (a case we discussed previously here), while on the
other hand we predicted the evolution of wind energy costs inside a 5% margin. In
any case, the real value of forecasting is what you learn in the process, as it forces
you to understand and quantify the forces that shape a particular market. In this
article we share four lessons learned while making market predictions and forecasts.




 Exhibit 1 – Comparison of 5-year forecasts with actual data for: wind energy capital costs, solar PV
           capital costs, oil price, carbon credits price and wave energy installed capacity




                                                                                                  2
1. Do not average forecasts

It is tempting to take forecasts from different sources and average the results. It is
also risky, because: i) different forecasts will likely be based on different premises;
and ii) forecasts are often biased (for instance, an industry association promoting a
particular renewable energy will likely be optimistic about installed capacity forecasts
and potential cost reductions).

A better alternative is to use a Delphi method, a process that shares roots with
prediction markets and other crowd wisdom techniques. In a Delphi, a group of
experts is asked to individually answer a question (e.g. what will be the cost of solar
energy in 2015?). The answers and assumptions of the experts are then discussed
and compared, and each of the experts makes a second prediction. This second
prediction is also made individually, but now the expert is able to leverage the new
information he gained from the other experts. The process is iterative and usually
runs until the moderator is satisfied that the answers share the same premises and
are bias-free.

Exhibit 2 illustrates the results of a Delphi method we recently used to gather the
inputs necessary to calculate the evolution of the LCoE (Levelized Cost of Energy) in
the Middle East for several renewable energy configurations.




 Exhibit 2 – Example of a Delphi method applied to estimating the LCoE of several PV, CSP and wind
                                 energy specific plant configurations



                                                                                               3
2. Make a sanity check

History is a poor indicator of what will happen in the future, so forecasts are
inherently inaccurate. They can however be made more precise by combining
different estimation methods, or by running a sanity check to confirm that the final
figure is coherent. This will not guarantee better results (only a crystal ball would do
that) but will help to identify flaws in logic, unrealistic assumptions and inaccurate
data.

As an example, Exhibit 3 compares a bottom-up forecast for wave energy
deployment (made by summing up individual regional forecasts) with the historical
early wind energy deployment. Benchmarking forecasts against historical data from
other sectors is a good way to quickly spot unrealistic assumptions, and to keep in
check compounded errors that often affect bottom-up estimates.




  Exhibit 3 – Example of using the historical early wind energy deployment as a sanity check for a
                          bottom-up forecast for wave energy deployment




                                                                                                 4
3. Build scenarios

Forecasts should not be a single data point or curve, but rather a collection of
scenarios. Building scenarios will do little against black swan events (a term coined
by Nassim Taleb to describe rare and unpredictable events with extreme impacts),
but will help you understand the impact of foreseeable events with several distinct
outcomes.

Exhibit 4 illustrates three scenarios for the forecast of EUA (European Union
Allowance)     carbon     credits   prices.    The    ‘High’    scenario     assumed      that    the
Kyoto Protocol was followed by a global agreement, the ‘Medium’ scenario was
based on an extension of the Kyoto Protocol, and the ‘Low’ scenario assumed no
significant agreement between the parties was reached.




 Exhibit 4 – Comparison of three scenarios for the evolution of carbon credit prices with the actual
                                           market prices




4. Run a sensitivity analysis

Even in the absence of foreseeable events that can dramatically change the direction
of a forecast, there are usually a few key parameters that can cause sizeable
variations in the predictions. Running a sensitivity analysis on these parameters is
thus a sound idea. Pool power prices, for instance, depend on the prices of the


                                                                                                  5
various power sources, and on factors such as rainfall and wind (since more rain
means more hydroelectric power and more wind means more wind power).

For forecasts that depend on several key parameters, it may be worthwhile to run a
Monte-Carlo simulation, a method that tests the impact of simultaneous changes in
multiple inputs. Exhibit 5 illustrates the application of a Monte-Carlo simulation to the
valuation of a CSP (Concentrated Solar Power) plant. The simulation showed that
the compounded effect of small changes in key parameters (such as energy yield,
pool price, capital expenditure and interest rate swap rates) could have a meaningful
impact on investor returns.




      Exhibit 5 – Example of a Monte-Carlo simulation applied to the valuation of a CSP plant




                                                                                                6
7

Weitere ähnliche Inhalte

Ähnlich wie Lessons learned from market forecasting

Stochastic life cycle costing
Stochastic life cycle costingStochastic life cycle costing
Stochastic life cycle costing
Bruno De Wachter
 
A national perspective on using rates to control power system costs (recommen...
A national perspective on using rates to control power system costs (recommen...A national perspective on using rates to control power system costs (recommen...
A national perspective on using rates to control power system costs (recommen...
bobprocter
 
ena_future_network_cost_august_2015
ena_future_network_cost_august_2015ena_future_network_cost_august_2015
ena_future_network_cost_august_2015
Garth Crawford
 
The Unheralded Value In Offshore Wind An Evaluation Using pCoudAnalytics
The Unheralded Value In Offshore Wind An Evaluation Using pCoudAnalyticsThe Unheralded Value In Offshore Wind An Evaluation Using pCoudAnalytics
The Unheralded Value In Offshore Wind An Evaluation Using pCoudAnalytics
Kofi Amoako-Gyan
 
Task Force Pace Phone Confer Q&A 7 29 09
Task Force Pace Phone Confer Q&A 7 29 09Task Force Pace Phone Confer Q&A 7 29 09
Task Force Pace Phone Confer Q&A 7 29 09
Chris Smith
 
EWEB Electricity - Applied Reinventing Fire Sustainable Development Theories_...
EWEB Electricity - Applied Reinventing Fire Sustainable Development Theories_...EWEB Electricity - Applied Reinventing Fire Sustainable Development Theories_...
EWEB Electricity - Applied Reinventing Fire Sustainable Development Theories_...
Benjamin Farrell
 
Small medium sized nuclear coal and gas power plant a probabilistic analysis ...
Small medium sized nuclear coal and gas power plant a probabilistic analysis ...Small medium sized nuclear coal and gas power plant a probabilistic analysis ...
Small medium sized nuclear coal and gas power plant a probabilistic analysis ...
d4vid3k0
 
EMR versus CFD Final main body V2
EMR versus CFD Final main body V2EMR versus CFD Final main body V2
EMR versus CFD Final main body V2
Bertie Readhead
 
Planning for a sustainable transmission service and grid – an approach to max...
Planning for a sustainable transmission service and grid – an approach to max...Planning for a sustainable transmission service and grid – an approach to max...
Planning for a sustainable transmission service and grid – an approach to max...
Power System Operation
 
Case Notes on MW Petroleum Corporation (A)Why Should We Care A.docx
Case Notes on MW Petroleum Corporation (A)Why Should We Care A.docxCase Notes on MW Petroleum Corporation (A)Why Should We Care A.docx
Case Notes on MW Petroleum Corporation (A)Why Should We Care A.docx
wendolynhalbert
 
Deepwater Decommissioning Cost Estimation Whitepaper (2016-01)
Deepwater Decommissioning Cost Estimation Whitepaper (2016-01)Deepwater Decommissioning Cost Estimation Whitepaper (2016-01)
Deepwater Decommissioning Cost Estimation Whitepaper (2016-01)
Robert Byrd
 

Ähnlich wie Lessons learned from market forecasting (20)

Expect the-unexpected cti-imperial " Yes Carbon Tracker forgot 10,000 billion...
Expect the-unexpected cti-imperial " Yes Carbon Tracker forgot 10,000 billion...Expect the-unexpected cti-imperial " Yes Carbon Tracker forgot 10,000 billion...
Expect the-unexpected cti-imperial " Yes Carbon Tracker forgot 10,000 billion...
 
Stochastic life cycle costing
Stochastic life cycle costingStochastic life cycle costing
Stochastic life cycle costing
 
A national perspective on using rates to control power system costs (recommen...
A national perspective on using rates to control power system costs (recommen...A national perspective on using rates to control power system costs (recommen...
A national perspective on using rates to control power system costs (recommen...
 
ena_future_network_cost_august_2015
ena_future_network_cost_august_2015ena_future_network_cost_august_2015
ena_future_network_cost_august_2015
 
The Unheralded Value In Offshore Wind An Evaluation Using pCoudAnalytics
The Unheralded Value In Offshore Wind An Evaluation Using pCoudAnalyticsThe Unheralded Value In Offshore Wind An Evaluation Using pCoudAnalytics
The Unheralded Value In Offshore Wind An Evaluation Using pCoudAnalytics
 
60230 nrel securiyzation
60230 nrel securiyzation60230 nrel securiyzation
60230 nrel securiyzation
 
SunBurn Test
SunBurn TestSunBurn Test
SunBurn Test
 
Task Force Pace Phone Confer Q&A 7 29 09
Task Force Pace Phone Confer Q&A 7 29 09Task Force Pace Phone Confer Q&A 7 29 09
Task Force Pace Phone Confer Q&A 7 29 09
 
EWEB Electricity - Applied Reinventing Fire Sustainable Development Theories_...
EWEB Electricity - Applied Reinventing Fire Sustainable Development Theories_...EWEB Electricity - Applied Reinventing Fire Sustainable Development Theories_...
EWEB Electricity - Applied Reinventing Fire Sustainable Development Theories_...
 
Small medium sized nuclear coal and gas power plant a probabilistic analysis ...
Small medium sized nuclear coal and gas power plant a probabilistic analysis ...Small medium sized nuclear coal and gas power plant a probabilistic analysis ...
Small medium sized nuclear coal and gas power plant a probabilistic analysis ...
 
EMR versus CFD Final main body V2
EMR versus CFD Final main body V2EMR versus CFD Final main body V2
EMR versus CFD Final main body V2
 
Planning for a sustainable transmission service and grid – an approach to max...
Planning for a sustainable transmission service and grid – an approach to max...Planning for a sustainable transmission service and grid – an approach to max...
Planning for a sustainable transmission service and grid – an approach to max...
 
Combined Cycles
Combined CyclesCombined Cycles
Combined Cycles
 
Verification process for DER modeling in interconnection-wide base case creation
Verification process for DER modeling in interconnection-wide base case creationVerification process for DER modeling in interconnection-wide base case creation
Verification process for DER modeling in interconnection-wide base case creation
 
Ignou 10 no. project
Ignou 10 no. projectIgnou 10 no. project
Ignou 10 no. project
 
Ltbr
LtbrLtbr
Ltbr
 
Case Notes on MW Petroleum Corporation (A)Why Should We Care A.docx
Case Notes on MW Petroleum Corporation (A)Why Should We Care A.docxCase Notes on MW Petroleum Corporation (A)Why Should We Care A.docx
Case Notes on MW Petroleum Corporation (A)Why Should We Care A.docx
 
Real time clustering of time series
Real time clustering of time seriesReal time clustering of time series
Real time clustering of time series
 
Deepwater Decommissioning Cost Estimation Whitepaper (2016-01)
Deepwater Decommissioning Cost Estimation Whitepaper (2016-01)Deepwater Decommissioning Cost Estimation Whitepaper (2016-01)
Deepwater Decommissioning Cost Estimation Whitepaper (2016-01)
 
Training Module
Training ModuleTraining Module
Training Module
 

Mehr von Romeu Gaspar

Plano de Acção para Energia Sustentável de Águeda
Plano de Acção para Energia Sustentável de ÁguedaPlano de Acção para Energia Sustentável de Águeda
Plano de Acção para Energia Sustentável de Águeda
Romeu Gaspar
 

Mehr von Romeu Gaspar (19)

Insights on building and managing virtual teams
Insights on building and managing virtual teamsInsights on building and managing virtual teams
Insights on building and managing virtual teams
 
How to follow renewable energies into emerging markets
How to follow renewable energies into emerging marketsHow to follow renewable energies into emerging markets
How to follow renewable energies into emerging markets
 
The rise of green mobile telecom towers
The rise of green mobile telecom towersThe rise of green mobile telecom towers
The rise of green mobile telecom towers
 
Sustainability and financial performance: the chicken or the egg dilemma
Sustainability and financial performance: the chicken or the egg dilemmaSustainability and financial performance: the chicken or the egg dilemma
Sustainability and financial performance: the chicken or the egg dilemma
 
Decision-making: choose the right tool for the job
Decision-making: choose the right tool for the jobDecision-making: choose the right tool for the job
Decision-making: choose the right tool for the job
 
2012 Yearbook
2012 Yearbook2012 Yearbook
2012 Yearbook
 
Ask for feedback like you mean it
Ask for feedback like you mean itAsk for feedback like you mean it
Ask for feedback like you mean it
 
Concrete wind towers: a low-tech innovation for a high-tech sector
Concrete wind towers: a low-tech innovation for a high-tech sectorConcrete wind towers: a low-tech innovation for a high-tech sector
Concrete wind towers: a low-tech innovation for a high-tech sector
 
Plano de Acção para Energia Sustentável de Águeda
Plano de Acção para Energia Sustentável de ÁguedaPlano de Acção para Energia Sustentável de Águeda
Plano de Acção para Energia Sustentável de Águeda
 
Manual de Boas Práticas em Eco-eficiência para Empresas
Manual de Boas Práticas em Eco-eficiência para EmpresasManual de Boas Práticas em Eco-eficiência para Empresas
Manual de Boas Práticas em Eco-eficiência para Empresas
 
Manual de Boas Práticas em Eco-eficiência para Famílias
Manual de Boas Práticas em Eco-eficiência para FamíliasManual de Boas Práticas em Eco-eficiência para Famílias
Manual de Boas Práticas em Eco-eficiência para Famílias
 
Carbon and cost reductions in the NHS
Carbon and cost reductions in the NHSCarbon and cost reductions in the NHS
Carbon and cost reductions in the NHS
 
Tackle climate change with tried and true persuasion techniques
Tackle climate change with tried and true persuasion techniquesTackle climate change with tried and true persuasion techniques
Tackle climate change with tried and true persuasion techniques
 
Going beyond "productization"
Going beyond "productization"Going beyond "productization"
Going beyond "productization"
 
X & Y: saving the environment & the economy
X & Y: saving the environment & the economyX & Y: saving the environment & the economy
X & Y: saving the environment & the economy
 
Cannibalization in Renewable Energies (Part I: Solar Energy)
Cannibalization in Renewable Energies (Part I: Solar Energy)Cannibalization in Renewable Energies (Part I: Solar Energy)
Cannibalization in Renewable Energies (Part I: Solar Energy)
 
An old recipe for an emerging issue
An old recipe for an emerging issueAn old recipe for an emerging issue
An old recipe for an emerging issue
 
Innovation in the cycling industry goes well beyond the bikes
Innovation in the cycling industry goes well beyond the bikesInnovation in the cycling industry goes well beyond the bikes
Innovation in the cycling industry goes well beyond the bikes
 
Should you buy an electric car?
Should you buy an electric car?Should you buy an electric car?
Should you buy an electric car?
 

Kürzlich hochgeladen

Jual Obat Aborsi ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan Cytotec
Jual Obat Aborsi ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan CytotecJual Obat Aborsi ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan Cytotec
Jual Obat Aborsi ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan Cytotec
ZurliaSoop
 
Al Mizhar Dubai Escorts +971561403006 Escorts Service In Al Mizhar
Al Mizhar Dubai Escorts +971561403006 Escorts Service In Al MizharAl Mizhar Dubai Escorts +971561403006 Escorts Service In Al Mizhar
Al Mizhar Dubai Escorts +971561403006 Escorts Service In Al Mizhar
allensay1
 

Kürzlich hochgeladen (20)

Katrina Personal Brand Project and portfolio 1
Katrina Personal Brand Project and portfolio 1Katrina Personal Brand Project and portfolio 1
Katrina Personal Brand Project and portfolio 1
 
Chennai Call Gril 80022//12248 Only For Sex And High Profile Best Gril Sex Av...
Chennai Call Gril 80022//12248 Only For Sex And High Profile Best Gril Sex Av...Chennai Call Gril 80022//12248 Only For Sex And High Profile Best Gril Sex Av...
Chennai Call Gril 80022//12248 Only For Sex And High Profile Best Gril Sex Av...
 
Marel Q1 2024 Investor Presentation from May 8, 2024
Marel Q1 2024 Investor Presentation from May 8, 2024Marel Q1 2024 Investor Presentation from May 8, 2024
Marel Q1 2024 Investor Presentation from May 8, 2024
 
Horngren’s Cost Accounting A Managerial Emphasis, Canadian 9th edition soluti...
Horngren’s Cost Accounting A Managerial Emphasis, Canadian 9th edition soluti...Horngren’s Cost Accounting A Managerial Emphasis, Canadian 9th edition soluti...
Horngren’s Cost Accounting A Managerial Emphasis, Canadian 9th edition soluti...
 
HomeRoots Pitch Deck | Investor Insights | April 2024
HomeRoots Pitch Deck | Investor Insights | April 2024HomeRoots Pitch Deck | Investor Insights | April 2024
HomeRoots Pitch Deck | Investor Insights | April 2024
 
Falcon Invoice Discounting: The best investment platform in india for investors
Falcon Invoice Discounting: The best investment platform in india for investorsFalcon Invoice Discounting: The best investment platform in india for investors
Falcon Invoice Discounting: The best investment platform in india for investors
 
Jual Obat Aborsi ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan Cytotec
Jual Obat Aborsi ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan CytotecJual Obat Aborsi ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan Cytotec
Jual Obat Aborsi ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan Cytotec
 
Arti Languages Pre Seed Teaser Deck 2024.pdf
Arti Languages Pre Seed Teaser Deck 2024.pdfArti Languages Pre Seed Teaser Deck 2024.pdf
Arti Languages Pre Seed Teaser Deck 2024.pdf
 
UAE Bur Dubai Call Girls ☏ 0564401582 Call Girl in Bur Dubai
UAE Bur Dubai Call Girls ☏ 0564401582 Call Girl in Bur DubaiUAE Bur Dubai Call Girls ☏ 0564401582 Call Girl in Bur Dubai
UAE Bur Dubai Call Girls ☏ 0564401582 Call Girl in Bur Dubai
 
Durg CALL GIRL ❤ 82729*64427❤ CALL GIRLS IN durg ESCORTS
Durg CALL GIRL ❤ 82729*64427❤ CALL GIRLS IN durg ESCORTSDurg CALL GIRL ❤ 82729*64427❤ CALL GIRLS IN durg ESCORTS
Durg CALL GIRL ❤ 82729*64427❤ CALL GIRLS IN durg ESCORTS
 
Falcon Invoice Discounting: Empowering Your Business Growth
Falcon Invoice Discounting: Empowering Your Business GrowthFalcon Invoice Discounting: Empowering Your Business Growth
Falcon Invoice Discounting: Empowering Your Business Growth
 
Organizational Transformation Lead with Culture
Organizational Transformation Lead with CultureOrganizational Transformation Lead with Culture
Organizational Transformation Lead with Culture
 
Call 7737669865 Vadodara Call Girls Service at your Door Step Available All Time
Call 7737669865 Vadodara Call Girls Service at your Door Step Available All TimeCall 7737669865 Vadodara Call Girls Service at your Door Step Available All Time
Call 7737669865 Vadodara Call Girls Service at your Door Step Available All Time
 
Kalyan Call Girl 98350*37198 Call Girls in Escort service book now
Kalyan Call Girl 98350*37198 Call Girls in Escort service book nowKalyan Call Girl 98350*37198 Call Girls in Escort service book now
Kalyan Call Girl 98350*37198 Call Girls in Escort service book now
 
CROSS CULTURAL NEGOTIATION BY PANMISEM NS
CROSS CULTURAL NEGOTIATION BY PANMISEM NSCROSS CULTURAL NEGOTIATION BY PANMISEM NS
CROSS CULTURAL NEGOTIATION BY PANMISEM NS
 
Al Mizhar Dubai Escorts +971561403006 Escorts Service In Al Mizhar
Al Mizhar Dubai Escorts +971561403006 Escorts Service In Al MizharAl Mizhar Dubai Escorts +971561403006 Escorts Service In Al Mizhar
Al Mizhar Dubai Escorts +971561403006 Escorts Service In Al Mizhar
 
Cannabis Legalization World Map: 2024 Updated
Cannabis Legalization World Map: 2024 UpdatedCannabis Legalization World Map: 2024 Updated
Cannabis Legalization World Map: 2024 Updated
 
Phases of Negotiation .pptx
 Phases of Negotiation .pptx Phases of Negotiation .pptx
Phases of Negotiation .pptx
 
Putting the SPARK into Virtual Training.pptx
Putting the SPARK into Virtual Training.pptxPutting the SPARK into Virtual Training.pptx
Putting the SPARK into Virtual Training.pptx
 
Pre Engineered Building Manufacturers Hyderabad.pptx
Pre Engineered  Building Manufacturers Hyderabad.pptxPre Engineered  Building Manufacturers Hyderabad.pptx
Pre Engineered Building Manufacturers Hyderabad.pptx
 

Lessons learned from market forecasting

  • 1. Lessons learned from market forecasting X&Y Partners December 2012 www.thisisxy.com Romeu Gaspar romeu.gaspar@thisisxy.com +44 (20) 3239 5245
  • 2. Lessons learned from market forecasting “ Forecasting is about the journey, not the destination: what you learn in the process will be more useful than the forecast itself. We are often asked to make market forecasts, so we decided to go back to some of our older forecasts and see how well we fared. We found that most forecasts had a fair 15-20% deviation from the actual figures (Exhibit 1). There were however outliers: on the one hand, we overestimated the global installed capacity of wave energy by an order of magnitude (a case we discussed previously here), while on the other hand we predicted the evolution of wind energy costs inside a 5% margin. In any case, the real value of forecasting is what you learn in the process, as it forces you to understand and quantify the forces that shape a particular market. In this article we share four lessons learned while making market predictions and forecasts. Exhibit 1 – Comparison of 5-year forecasts with actual data for: wind energy capital costs, solar PV capital costs, oil price, carbon credits price and wave energy installed capacity 2
  • 3. 1. Do not average forecasts It is tempting to take forecasts from different sources and average the results. It is also risky, because: i) different forecasts will likely be based on different premises; and ii) forecasts are often biased (for instance, an industry association promoting a particular renewable energy will likely be optimistic about installed capacity forecasts and potential cost reductions). A better alternative is to use a Delphi method, a process that shares roots with prediction markets and other crowd wisdom techniques. In a Delphi, a group of experts is asked to individually answer a question (e.g. what will be the cost of solar energy in 2015?). The answers and assumptions of the experts are then discussed and compared, and each of the experts makes a second prediction. This second prediction is also made individually, but now the expert is able to leverage the new information he gained from the other experts. The process is iterative and usually runs until the moderator is satisfied that the answers share the same premises and are bias-free. Exhibit 2 illustrates the results of a Delphi method we recently used to gather the inputs necessary to calculate the evolution of the LCoE (Levelized Cost of Energy) in the Middle East for several renewable energy configurations. Exhibit 2 – Example of a Delphi method applied to estimating the LCoE of several PV, CSP and wind energy specific plant configurations 3
  • 4. 2. Make a sanity check History is a poor indicator of what will happen in the future, so forecasts are inherently inaccurate. They can however be made more precise by combining different estimation methods, or by running a sanity check to confirm that the final figure is coherent. This will not guarantee better results (only a crystal ball would do that) but will help to identify flaws in logic, unrealistic assumptions and inaccurate data. As an example, Exhibit 3 compares a bottom-up forecast for wave energy deployment (made by summing up individual regional forecasts) with the historical early wind energy deployment. Benchmarking forecasts against historical data from other sectors is a good way to quickly spot unrealistic assumptions, and to keep in check compounded errors that often affect bottom-up estimates. Exhibit 3 – Example of using the historical early wind energy deployment as a sanity check for a bottom-up forecast for wave energy deployment 4
  • 5. 3. Build scenarios Forecasts should not be a single data point or curve, but rather a collection of scenarios. Building scenarios will do little against black swan events (a term coined by Nassim Taleb to describe rare and unpredictable events with extreme impacts), but will help you understand the impact of foreseeable events with several distinct outcomes. Exhibit 4 illustrates three scenarios for the forecast of EUA (European Union Allowance) carbon credits prices. The ‘High’ scenario assumed that the Kyoto Protocol was followed by a global agreement, the ‘Medium’ scenario was based on an extension of the Kyoto Protocol, and the ‘Low’ scenario assumed no significant agreement between the parties was reached. Exhibit 4 – Comparison of three scenarios for the evolution of carbon credit prices with the actual market prices 4. Run a sensitivity analysis Even in the absence of foreseeable events that can dramatically change the direction of a forecast, there are usually a few key parameters that can cause sizeable variations in the predictions. Running a sensitivity analysis on these parameters is thus a sound idea. Pool power prices, for instance, depend on the prices of the 5
  • 6. various power sources, and on factors such as rainfall and wind (since more rain means more hydroelectric power and more wind means more wind power). For forecasts that depend on several key parameters, it may be worthwhile to run a Monte-Carlo simulation, a method that tests the impact of simultaneous changes in multiple inputs. Exhibit 5 illustrates the application of a Monte-Carlo simulation to the valuation of a CSP (Concentrated Solar Power) plant. The simulation showed that the compounded effect of small changes in key parameters (such as energy yield, pool price, capital expenditure and interest rate swap rates) could have a meaningful impact on investor returns. Exhibit 5 – Example of a Monte-Carlo simulation applied to the valuation of a CSP plant 6
  • 7. 7