Technical Analysis applied on Energy Markets Holger Galuschke, Technical Market Analyst Düsseldorf, June 15 th, 2010.

Slides:



Advertisements
Similar presentations
Chapter 3 Properties of Random Variables
Advertisements

Technical Analysis 101 : Session 2 Stanley Yabroff Val Alekseyev.
Albatross Software Services Pvt. Ltd. CGLIVE is a Windows-based internet software that gets you data from anywhere around the world without any other third-party.
Understanding how to spread bet using the IG.com spread betting demo account Christopher Annett
Saeed Ebrahimijam Spring 2013 Faculty of Business and Economics Department of Banking and Finance Doğu Akdeniz Üniversitesi FINA417.
Technical Analysis of Equity Markets Tridib Chatterji Al Akhawayn University, Ifrane, Morocco April 2004.
Senior Design Project ECE 401. Team Members  Supervision: Prof. Edwin K. P. Chong, Ph.D.  Ph.D. student Ramin Zahedi  Abdullah Altunaiji  Yazeed AlRuwayti.
Technical Analysis EXTRA. Support & Resistance support is the price level through which a stock or market seldom falls Resistance, on the other hand,
Analysis of Technical Trends Ryan Weikert. Asset Valuation Pricing, Buying, and Selling of Assets Methods of Appraisal What stocks, when? Fundamental.
IV. Evaluate the results Summary of Trades Summary of Performance Period Tested 1690 days (4.63 years) Investment Period 1005 days (2.75 years) Successful.
Get your Timing Right Marketworx Preparation – Step Three.
CHAPTER 9 Technical Analysis. McGraw-Hill/Irwin © 2004 The McGraw-Hill Companies, Inc., All Rights Reserved. Technical Analysis Technical analysis attempts.
Sándor Bozsik (Ph.D) Miskolc University Hungary. In efficient market the NPV of all investment decisions is 0. Assumptions:  Information efficiency 
Value at Risk Concepts, data, industry estimates –Adam Hoppes –Moses Chao Portfolio applications –Cathy Li –Muthu Ramanujam Comparison to volatility and.
BY EVAN FRISCIA AND PARTH THAKKAR Introduction to Technical Analysis.
Technical Analysis Basics Analysis - Trading Alternative methods Examples Discussion.
Lecture Presentation Software to accompany Investment Analysis and Portfolio Management Seventh Edition by Frank K. Reilly & Keith C. Brown Chapter.
Your First Step Intothe World Of Trading Understanding The Basics of Trading.
Today Risk and Return Reading Portfolio Theory
Beyond the Fundamentals Technical Analysis. Technical Analysis vs. Fundamental Analysis Fundamental analysis focuses on economic/financial theory and.
Mutual Investment Club of Cornell Week 8: Portfolio Theory April 7 th, 2011.
SOME STATISTICAL CONCEPTS Chapter 3 Distributions of Data Probability Distribution –Expected Rate of Return –Variance of Returns –Standard Deviation –Covariance.
Lecture 12 International Portfolio Theory and Diversification.
Price Forecasting. Price Analysis Fundamental AnalysisTechnical Analysis Fundamental Analysis: involves the use of supply, demand and other economic factors.
The Ten Lows of Technical Trading The Ten Lows of Technical Trading J.J. Murphy StockCharts.com - ChartSchool.
Technical Price Analysis H The analysis of historical prices patterns using charts, diagrams, mathematical equations, etc. H This approach emphasizes how.
With technical analysis, timing is the critical success factor. Technical Analysis serves to determine "when to buy or when to sell" shares. It is concerned.
RISK AND RETURN Rajan B. Paudel. Learning Outcomes By studying this unit, you will be able to: – Understand various concepts of return and risk – Measure.
Saeed Ebrahimijam SPRING Faculty of Business and Economics Department of Banking and Finance Doğu Akdeniz Üniversitesi FINA417.
11-1 Copyright © 2011 by the McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin.
CHAPTER 05 RISK&RETURN. Formal Definition- RISK # The variability of returns from those that are expected. Or, # The chance that some unfavorable event.
Measuring Returns Converting Dollar Returns to Percentage Returns
Bollinger Bands Metastock User Group 11/5/02 Leland Brode
TECHNICAL ANALYSIS. Introduction What is Technical Analysis? Philosophy or Rationale – Market action discounts everything – Prices move in trends – History.
Lecture Four RISK & RETURN.
MOVING AVERAGES. MOVING AVERAGE METHOD IS THE MOST WIDELY USED METHOD OF IDENTIFYING TREND REVERSAL SINCE THEY DO A GOOD JOB AT ROUNDING UP THE FLUCTUATIONS.
 Lecture #9.  The course assumes little prior applied knowledge in the area of finance.  References  Kristina (2010) ‘Investment Analysis and Portfolio.
October 15 th Common Cents Investment Group October, 2012 Agenda  FX on Investopedia  Today in the market  Technical Analysis – Part II  Pick.
Risk and Capital Budgeting Chapter 13. Chapter 13 - Outline What is Risk? Risk Related Measurements Coefficient of Correlation The Efficient Frontier.
Academy #8 Technical Analysis Speakers: Charles & Daniel Get connected to B&R 1.
1 Risk Learning Module. 2 Measures of Risk Risk reflects the chance that the actual return on an investment may be different than the expected return.
Planning Trades for Entry and Exit. Options involve risk and are not suitable for all investors. For more information, please read the Characteristics.
Copyright © 2009 Pearson Prentice Hall. All rights reserved. Chapter 5 Risk and Return.
Line - Chart. Candlestick chart A trend line with triangles.
Finance 300 Financial Markets Lecture 3 Fall, 2001© Professor J. Petry
AGEC 420, Lec 341 Agec 420 Homework #7 –Charting Review Quiz 7.
INVESTMENTS | BODIE, KANE, MARCUS Copyright © 2011 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin CHAPTER 4 Risk and Portfolio.
1 Estimating Return and Risk Chapter 7 Jones, Investments: Analysis and Management.
NUS Invest nusinvest.com DISCLAIMER AND DISCLOSURES Please read the disclaimer and the disclosures which can be found within this report GM WESTERN INDICATORS.
1 THE FUTURE: RISK AND RETURN. 2 RISK AND RETURN If the future is known with certainty, all investors will hold assets offering the highest rate of return.
© K. Cuthbertson and D. Nitzsche Chapter 9 Measuring Asset Returns Investments.
Chapter 7 An Introduction to Portfolio Management.
INTRODUCTION RSI- RELATIVE STRENGTH INDEX MOVING AVERAGE BOLLINGER BANDSSUMMARY.
Data Mining: Neural Network Applications by Louise Francis CAS Convention, Nov 13, 2001 Francis Analytics and Actuarial Data Mining, Inc.
Copyright © 2011 Pearson Prentice Hall. All rights reserved. Risk and Return: Capital Market Theory Chapter 8.
TAG Villanova Technical Analysis Group. VOLUME Understanding Volume  Volume is the number of shares or contracts over a given period of time, that is.
DCX on B-School. Technical Analysis 101 : Session 1 Josheph Adhikari Dipendra Banskota DCX On B-School.
Diversification, risk, return and the market portfolio.
 Analysis of statistics generated by market activity such as past price and volume to come up with reasonable outcome in future using charts as a primary.
Risk and Return An Overview
Risk and Rates of Return
Villanova Technical Analysis Group
Chapter 9 Moving averages
Capital Market Charts 2005 Series (Modern Portfolio Theory Review) IFS-A Charts 1-3 Reminder: You must include the Modern Portfolio Theory Disclosure.
Capital Market Charts 2004 Series (Modern Portfolio Theory Review) IFS-A Charts 1-9 Reminder: You must include the Modern Portfolio Theory Disclosure.
Liberation by M.C. Escher
Chapter 9 Moving averages
Lecture 28 Technical Indicators.
Momentum Momentum is used to indicate the speed with which prices are changing. When a change in direction occurs in a short-term trend, technicians say.
Trade School: Understanding Stochastics
Presentation transcript:

Technical Analysis applied on Energy Markets Holger Galuschke, Technical Market Analyst Düsseldorf, June 15 th, 2010

2 Holger Galuschke  Technical Analyst Energy Markets (Power, Oil, Coal, Gas, Carbon, Freight)  Technical Tools: Indicators, Trendlines, Support/ Resistance Lines, Support/Resistance Channels, Fibonacci Relationships, Analysis of Contraction & Expansion, Dow Theory, Point & Figure  Co-Author of „Tradingwelten“, Finanzbuch Verlag

3 We are part of E.ON E.ON Energy Trading is part of one of the world’s largest investor- owned power and gas companies, with commercial activities around the globe.

4 E.ON is an integrated energy company Climate & Renewables E.ON Climate & Renewables GmbH, Düsseldorf Spain E.ON España, Madrid Italy E.ON Italia, Milan Russia E.ON Russia Power, Moscow Central Europe E.ON Energie AG, Munich Pan-European Gas E.ON Ruhrgas AG, Essen United Kingdom E.ON UK plc, Coventry Nordic E.ON Nordic AB, Malmö US Midwest E.ON U.S. LLC, Louisville Energy Trading E.ON Energy Trading SE Düsseldorf

5 We unite the entire trading expertise of E.ON  We trade in all major European markets.  We are active at all major exchanges.  We are active in 40 countries.  All E.ON’s European trading expertise is united in Düsseldorf.

6 We have a large stake in the international energy markets*  Power: 1,240 TWh  Gas: 1,498 TWh  CO2 allowances: 501 million t  Oil: 69 million t  Coal: 223 million t  Adjusted EBIT: 949 million € (*All numbers cited are for 2009)

7 Contents  Technical Tools applied on the Energy Markets  Technical Analysis on individual Energy Products  Bringing Energy Market together  Indexed Relative Performance Charts  Volatility Analysis in the Energy Markets  Correlation Analysis in the Energy Markets  Beta Factor Analysis in the Energy Markets  Oil as the Benchmark in the Energy Markets ?  The Impact of EURUSD on the Oil Market  Power as the Benchmark in the Energy Markets ?  Gas as the Benchmark in the Energy Markets ?  Coal as the Benchmark in the Energy Markets ?  Carbon as the Benchmark in the Energy Markets ?  Technical Analysis in Cross Commodity Trading – Spreads

8 Technical Tools applied on the Energy Markets Bollinger Bands Exponenti al Weighted Averages MACD Momentum R SI Stochastics Trendchannels Support/ Resistance Lines Volum e Open Interest Volatility Source: Thomson Reuters TradeSignal Enterprise Fibonacci Ratracements and - Targets Expansion / Contraction

9 Technical Tools applied on the Energy Markets Source: Thomson Reuters, Updata

10 Technical Tools applied on the Energy Markets Source: Thomson Reuters, Trayport

11 Technical Tools applied on the Energy Markets  Bollinger Bands  Introduced by: John Bollinger in the early 80s  Category: Envelopes  based on standard deviation around a moving average  used for: evaluating medium term volatility Bollinger Bands -> n = 20 (days) / STD -> n = 2

12 Technical Tools applied on the Energy Markets  MACD – Moving Average Convergence Divergence  Introduced by: Gerald Apple in the 60s  Category: Trend following System  Based on two Exponential Weighted Averages  Oscillator Concept  MACD = Difference between two Exponential Averages  Study of a Study: Signal = Exponential Weighted Average of the MACD Values  used for: evaluating medium term impulses EWAslow -> n = 20 (days) / EWAfast -> n = 10 (days) / EWASignal -> n = 5 (days)

13 Technical Tools applied on the Energy Markets  Momentum / Rate of Change  Introduced by: Welles Wilder in 1978 in his book “New Concepts in Technical Trading Systems”  Category: Trend following System  Based on Difference between two prices  EWA of the Momentum Values to smooth Momentum study  used for: evaluating medium term impulses Momentum -> n = 20 (days) / EWAMomentum -> n = 5 (days)

14 Technical Tools applied on the Energy Markets  RSI  Introduced by: Welles Wilder in 1978 in his book “New Concepts in Technical Trading Systems”  Category: Overbought/Oversold System  based on relationship between up- and down differences in prices  EWA of the RSI Values to smooth RSI study  used for: evaluating short term impulses RSI -> n = 10 (days) / EWARSI -> n = 5 (days)

15 Technical Tools applied on the Energy Markets  Stochastics  Introduced by: George Lane in the 50s  Category: Overbought/Oversold System  based on relationship between current close and aggregated high-low range  EWA of the Stochastics Values to smooth Stochastics study  used for: evaluating short term impulses Stochastics -> n = 10 (days) / EWARSI -> n = 5 (days)

16 Technical Tools applied on the Energy Markets  Volatility  used for: evaluating short term volatility ... of statistical trading range of one day ... of statistical trading range of two day (to include gaps)

17 Technical Tools applied on the Energy Markets  Trend channels  based on corrections  high points within a downtrend  low points within an uptrend  Support / Resistance Lines  based important lows and high  importance dependent on cause of appearance  Fibonacci Relationships  based on Fibonacci Row of numbers ( ∞)  Fibonacci Relationships:55:89 ≈ / 55:144 ≈ / 55:233 ≈ :34=1.618 / 55:21 ≈ / 55:13 ≈  Used to evaluate possible correction targets and possible impulse targets  Foundation for Elliott Wave Analysis

18 Technical Analysis on EURUSD Source: Thomson Reuters, TradeSignal Enterprise

19 Technical Analysis on individual Energy products – Oil Source: Thomson Reuters, TradeSignal Enterprise

20 Technical Analysis on individual Energy products – Gas Source: Trayport, TradeSignal Enterprise

21 Technical Analysis on individual Energy products – Carbon Source: Thomson Reuters TradeSignal Enterprise

22 Technical Analysis on individual Energy products – Coal Source: Trayport, TradeSignal Enterprise

23 Technical Analysis on individual Energy products – Power Source: Trayport TradeSignal Enterprise

24 Technical Analysis on Freight Source: Thomson Reuters, TradeSignal Enterprise

25 Technical Analysis on Gas – Fibonacci Retracements & Targets Source: Thomson Reuters, TradeSignal Enterprise

26 Technical Analysis on Power – Fibonacci Retracements & Targets Source: Thomson Reuters, TradeSignal Enterprise

27 Technical Analysis on Spreads – API2 vs. API4 Source: Thomson Reuters, Trayport TradeSignal Enterprise

28 Technical Analysis on Spreads – API2(€) vs. NBP(€) Source: Thomson Reuters, Trayport TradeSignal Enterprise

29 Technical Analysis on Spreads – API2(€) vs. NBP(€) Source: Thomson Reuters, Trayport TradeSignal Enterprise

30  Indexed Relative Performance Charts  Volatility Analysis  Correlation Analysis  Beta Factor Analysis Bringing the Energy Markets together – From Individual to Integrated Evaluation

31 Indexed Relative Performance of the Energy Markets Source: Thomson Reuters, Trayport, TradeSignal Enterprise

32 Volatility Analysis in the Energy Markets  What is Volatility ? A statistical measure of the dispersion of returns for a given security or market index. Volatility can either be measured by using standard deviation or variance between returns from that security or market index. Return can either be calculated as absolute or logarithmic relative.  Standard Deviation The Standard Deviation is a measure of the variability or dispersion of a data set from its mean.  Formula

33 Correlation Analysis in the Energy Markets  What is Correlation ? The Correlation describes the linear relationship between two or more statistical variables. In financial markets, the question which should be answered is whether there is a dependency between two or more time series and if so, how distinctive it is. The mathematical figure which answer that question is the Correlation Coefficient.  Correlation Coefficient The Correlation Coefficient is the figure to determine the grade of linear relationship. The Correlation Coefficient can accept values between +1 and -1. A Correlation Coefficient of +1 means a complete positive relationship („the more...the more“), a Correlation Coefficient of -1 means a complete negative relationship („the more...the less“) between two time series. A Correlation Coefficient of 0 means no relationship between two time series.

34 Correlation Analysis in the Energy Markets  Formula The Correlation Coefficient r according to Pearson is calculated as follow:

35 Beta Factor Analysis in the Energy Markets  What is Beta Factor ? The Correlation describes the linear relationship between two or more statistical variables. If the independent market moves up and the dependent market moves also up, the Correlation is +1. If the independent market moves down and the dependent market moves up, the Correlation is -1. If the independent market moves and the dependent market does not, the Correlation is 0. The Beta Factor expands the meaning of the Correlation Factor. It is not only a measure of Correlation it is in addition a measure of risk. Beta is also referred to as financial elasticity or correlated relative volatility, and can be referred as a measure of the sensitivity of the return of the dependent market to those of the independent market. It is the non-diversifiable risk, its systematic risk or market risk.

36 Beta Factor Analysis in the Energy Markets  Variance and Covariance Variance: The Variance is closely related to the Standard Deviation. It is simple the square of it. Or, in other words, the Standard Deviation is the Square Root of the Variance. Covariance: It is a measure of how much two variables changes together (Variance is a special case of the covariance, when the two variables are identical). If two variable tend to vary together, then the covariance between this two variables is positive. Conversely, if one of them tends to be above its expected value and the other below, then the covariance between this two variables is negative

37  Formula The Beta Factor is calculated as follow: Beta Factor Analysis in the Energy Markets

38 Coal vs. Carbon – Volatility, Correlation and Beta Source: Thomson Reuters, Trayport TradeSignal Enterprise

39 Oil as the Benchmark ? – Oil vs. “All” Source: Thomson Reuters, Trayport TradeSignal Enterprise

40 Excursion: EURUSD as the Benchmark ? – EURUSD vs. “All” Source: Thomson Reuters, Trayport, TradeSignal Enterprise

41 Excursion: S&P 500 as the Benchmark ? – S&P 500 vs. “All” Source: Thomson Reuters, Trayport, TradeSignal Enterprise

42 Gas as the Benchmark – Gas vs. “All” Source: Thomson Reuters, Trayport TradeSignal Enterprise

43 Carbon as the Benchmark – Carbon vs. “All” Source: Thomson Reuters, Trayport TradeSignal Enterprise

44 Coal as the Benchmark – Coal vs. “All” Source: Thomson Reuters, Trayport TradeSignal Enterprise

45 Power as the Benchmark ? – Power vs. “All” Source: Thomson Reuters, Trayport, TradeSignal Enterprise

46  At a glance, the energy markets seem to move in the same direction in general  But under the magnifying glass there are distinctive differences  Correlation and Beta Factor can help the trader / analyst to benefit from the interrelated energy market  This knowledge can be useful in particular, if trading cross commodity, for example Spreads  Examples:  In the Power Market: (Clean) Dark Spreads and the (Clean) Spark Spreads  In the Oil Market: Crack Spreads  In the Carbon Market: EUA / CER Spreads  etc. Conclusion: