ana pueyo - green growth diagnostics for africa
TRANSCRIPT
Dr. Ana Pueyo – Institute of Development Studies (IDS)
Closure event – 19th January
Wellcome Trust, London
Overview of the GGDA project
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Green Growth Diagnostics for Africa
Principal Investigator
Country leadership- co-investigators
GHANA KENYA
Technical and political
economy partnersFunding partners
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Clean energy access is a development priority
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What constraints RE investment in Ghana and Kenya?
• Long list of constraints and related policies
• But not all constraints are equally important.
• Public funds are limited and they need to focus on the key constraints: those that if relaxed would deliver the biggest “bang for the buck”
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Growth Diagnostics Framework
“there may be many reasons why an economy does not grow, but each reason generates a distinctive set of symptoms” (Haussmann, Rodrik and Velasco, 2004).
“For this particular country, at this particular time, what is preventing the country from achieving higher sustained and shared growth?” (Haussmann, Klinger and Wagner, 2008: 4).
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Research questions
•What are the binding constraints to investment in RE in Kenya and Ghana?
•Which policies can remove the most binding constraint, are they politically feasible?
•What will be the macroeconomic effect of increasing the share of RE and implementing the required policies?
•What is the value of grid-scale variable renewable energy generation in Kenya and Ghana?
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GREEN GROWTH DIAGNOSTICS METHODOLOGY
Binding
constraints
Political
economy
analysisCGEM
Power
Systems
Reliability
Analysis
Dissemination and engagement
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3 steps to finding binding constraints
1. Decision tree analysis
2. Symptoms or signals that a constraint is binding
– The shadow price of the scarce resource should be high
– Movements in the constraint should produce significant changes in the desired outcome
– Agents in the economy should be attempting to overcome or bypass the constraint
– Agents less intensive in the constraint are more likely to survive and thrive
3. Syndrome or theory to explain why constraints emerge and persist
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PROBLEM: SUBOPTIMAL INVESTMENT IN RENEWABLE
ENERGY
Unattractive investments Insufficient supply of suitable
finance
Low returns High risks Inadequate access
to savingsPoor
intermediation
Why is there underinvestment in RE generation capacity?
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Unattractive investments
Low returnsHigh risks
High costs Low revenues
InstalledO&M Financing
Resource
Prices Curtailment
Link to finance
decision tree
Demand
Project costs System costs
Resource
Are RE attractive enough?- Returns
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Are RE attractive enough?- Risks
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Is appropriate finance available?- Supply
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Is appropriate finance available?-Intermediation
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Kenya and Ghana case studies
Kenya Ghana
Population (2015) 46 Million 27.4 Million
Income per capita 2015 (USD current) 1340 1480
Electricity access (%) 20% (in 2013)
55% (in 2016)
72% (in 2013)
Electricity demand growth (2010-2015) 6% 7%
Installed capacity (2015) 2,404 MW 2,831 MW
% Renewable capacity 63% 56%
% Renewables exc. hydro 29% 0.1%
System losses (2013) 18% 21.5%
Number of blackouts per month 6.3 8.4
Average duration of blackouts (hours) 5.6 6.6
% enterprises with generators 57.4% 52.1%
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Background Ghana
• Chronic underinvestment in generation capacity and low utilisation of existing plants
• Heavy cost for the economy of unreliable electricity supply
• Expensive and dirty “short-term” solutions
• RE not framed as part of the solution by the Government and WB
• FiT approved and long pipeline of projects with provisional licenses but none with commercial operations to date
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Decision tree of constraints to RE in Ghana
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Syndrome: the overborrowing State
•High fiscal deficit
•State overcrowding private investment
•Patronage
•Bailout by IMF in 2015
•Potential further pressures: aggressive industrialisation and universal electrification
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Background Kenya
• First SSA country to attract a significant number of IPPs through competitive bids
• It has sufficient generation capacity at the moment and may reach overcapacity in the medium term
• Ambitious geothermal programme and expectation that renewables will meet 90% of demand in the long term
• But very low access rates and bad quality of access
• FiT in place, but low implementation and a large number of unsolicited proposals
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Decision tree of constraints to RE in Kenya
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Syndrome: rent-absorbing political elite
• High inflows of foreign aid channelled to the priorities of the political elite: large scale, flagship projects- wind and geothermal
• Networking elements of the system and small scale provision for small dispersed rural areas not a priority
• Local communities can effectively mobilise when they do not see a benefit in large infrastructure projects
• FiT promoted by donors but so far seldom used
• But new game-changing policies: Mini-grids regulation, geospatial mapping for on-grid off-grid planning; auctioning scheme for renewables; draft National Energy and Petroleum Policy 2015; Energy Bill 2015; local content regulations 2015.
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Focus of closure event
•Planning
•Regulation
•Finance
•Social acceptance
•Political economy
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Conclusions
• Useful methodology to reduce a large number of potential constraints to investment in RE to a manageable number
• Policies to remove these constraints are not always politically feasible- PEA required
• Binding constraints + PEA could significantly enhance effectiveness of policy support to RE in Africa
• We invite donors and national policymakers to replicate this exercise to better target their support to green growth in developing countries
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Thank [email protected]
Green Growth Diagnostics for Africa webpage: http://www.ids.ac.uk/project/green-growth-diagnostics-
for-africa
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Costs and returns Kenya and Ghana
LCOE (USD cents per kWh)
Technology Ghana Kenya
Wind 14.3 10.3
Solar 18.7 14.8
Hydro 7.9 10.7
Geothermal 7.3
Returns (%)
Technology Ghana Kenya
Wind 6.9 14.3
Solar Close to 0% 5.3
Hydro 33.5 5.3
Geothermal 16.8
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Prices in Kenya and GhanaAverage electricity end-user tariffs in Kenya and Ghana USDc/kWh
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Offtaker risks in Kenya and Ghana
Off-taker risk Topic Indicator Ghana Kenya
Operational performance
EBIT (if positive, EBIT margin) -123 Mill cedis
12%
Liquidity Current liabilities/current assets 154% 60% cash and cash equivalents/ Accounts payable and short term borrowing
8% 91%
Financial structure Short term debt/equity and LT debt 45% 19% System losses System losses (as % purchases) 23% 17.5% Credit risk Revenue collection to sales 89.9%
Trade receivables past due by more than a year
13% 3% (over a year) 11% (plus impairment)
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Financial intermediation
Intermediation Topic Indicator Ghana Kenya SSA LMI
Poor intermediation
Bank lending-deposit spread 2015 16 8.7 8.8 6.8
Competition Bank concentration (%) 2013 70.1 51.6 75.4 70.1 Boone indicator (2013) -0.13 -0.09 -0.05 -0.05
Cost Bank overhead costs to total assets (%) 5.7 4.7 5.2 3.4 Performance Bank return on equity (%, after tax)
2013 31.8 15.5 15.5 11.2
Bank non-performing loans to gross loans (%)
12 5 5.6 5.6
Stock market returns (%, year on year) 74.4 50 Short-termism Syndicated loan average maturity
(years) 2013 1.1 9.5 4.5 5
Average maturity on new external debt commitments (2014)
12.1 (2014) 18 (2010-14)
16.7 (2014) 28 (2010-2014)
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Macroeconomic risks
Macroeconomic risk
Topic Indicator Ghana Kenya Currency risk Change in exchange rate (USD per local
currency)
-65% (2011-2015)
-18 % (2015)
-13% (2011-2015)
-10 % (2015)
Inflation Consumer Price Index year on year Dec
2015
17.7% (2015) 6.6%
Fiscal stability Current account deficit -9.2% (2014) -7.1%
Fiscal deficit -10.4% (2014) -7.3% (2015)