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Market Sentiment
Neutral (Oversold)
Based on the latest 13 weeks of non-commercial positioning data. â„šī¸

MARYLAND COMPLIANCE REC TIER1 (Non-Commercial)

13-Wk Max 5,417 3,970 937 2,387 4,067
13-Wk Min 1,637 1,350 -1,880 -1,005 -1,396
13-Wk Avg 3,786 2,292 -219 194 1,493
Report Date Long Short Change Long Change Short Net Position Rate of Change (ROC) â„šī¸ Open Int.
April 8, 2025 2,574 3,970 0 0 -1,396 0.00% 11,722
April 1, 2025 2,574 3,970 0 125 -1,396 -9.83% 11,722
March 25, 2025 2,574 3,845 0 0 -1,271 0.00% 11,597
March 18, 2025 2,574 3,845 937 2,387 -1,271 -810.06% 11,597
March 11, 2025 1,637 1,458 -1,005 -1,005 179 0.00% 10,529
March 4, 2025 2,642 2,463 -1,880 913 179 -93.98% 10,133
February 25, 2025 4,522 1,550 -325 0 2,972 -9.86% 16,680
February 18, 2025 4,847 1,550 -25 0 3,297 -0.75% 16,942
February 11, 2025 4,872 1,550 75 0 3,322 2.31% 16,967
February 4, 2025 4,797 1,550 -220 200 3,247 -11.45% 16,892
January 28, 2025 5,017 1,350 -150 0 3,667 -3.93% 17,012
January 21, 2025 5,167 1,350 -250 0 3,817 -6.15% 17,012
January 14, 2025 5,417 1,350 0 -100 4,067 2.52% 16,587

Net Position (13 Weeks) - Non-Commercial

Change in Long and Short Positions (13 Weeks) - Non-Commercial

COT Interpretation for POLLUTION

Comprehensive Guide to COT Reports for Commodity Natural Resources Markets


1. Introduction to COT Reports

What are COT Reports?

The Commitments of Traders (COT) reports are weekly publications released by the U.S. Commodity Futures Trading Commission (CFTC) that show the positions of different types of traders in U.S. futures markets, including natural resources commodities such as oil, natural gas, gold, silver, and agricultural products.

Historical Context

COT reports have been published since the 1920s, but the modern format began in 1962. Over the decades, the reports have evolved to provide more detailed information about market participants and their positions.

Importance for Natural Resource Investors

COT reports are particularly valuable for natural resource investors and traders because they:

  • Provide transparency into who holds positions in commodity markets
  • Help identify potential price trends based on positioning changes
  • Show how different market participants are reacting to fundamental developments
  • Serve as a sentiment indicator for commodity markets

Publication Schedule

COT reports are released every Friday at 3:30 p.m. Eastern Time, showing positions as of the preceding Tuesday. During weeks with federal holidays, the release may be delayed until Monday.

2. Understanding COT Report Structure

Types of COT Reports

The CFTC publishes several types of reports:

  1. Legacy COT Report: The original format classifying traders as Commercial, Non-Commercial, and Non-Reportable.
  2. Disaggregated COT Report: Offers more detailed breakdowns, separating commercials into producers/merchants and swap dealers, and non-commercials into managed money and other reportables.
  3. Supplemental COT Report: Focuses on 13 select agricultural commodities with additional index trader classifications.
  4. Traders in Financial Futures (TFF): Covers financial futures markets.

For natural resource investors, the Disaggregated COT Report generally provides the most useful information.

Data Elements in COT Reports

Each report contains:

  • Open Interest: Total number of outstanding contracts for each commodity
  • Long and Short Positions: Broken down by trader category
  • Spreading: Positions held by traders who are both long and short in different contract months
  • Changes: Net changes from the previous reporting period
  • Percentages: Proportion of open interest held by each trader group
  • Number of Traders: Count of traders in each category

3. Trader Classifications

Legacy Report Classifications

  1. Commercial Traders ("Hedgers"):
    • Primary business involves the physical commodity
    • Use futures to hedge price risk
    • Include producers, processors, and merchants
    • Example: Oil companies hedging future production
  2. Non-Commercial Traders ("Speculators"):
    • Do not have business interests in the physical commodity
    • Trade for investment or speculative purposes
    • Include hedge funds, CTAs, and individual traders
    • Example: Hedge funds taking positions based on oil price forecasts
  3. Non-Reportable Positions ("Small Traders"):
    • Positions too small to meet reporting thresholds
    • Typically represent retail traders and smaller entities
    • Considered "noise traders" by some analysts

Disaggregated Report Classifications

  1. Producer/Merchant/Processor/User:
    • Entities that produce, process, pack, or handle the physical commodity
    • Use futures markets primarily for hedging
    • Example: Gold miners, oil producers, refineries
  2. Swap Dealers:
    • Entities dealing primarily in swaps for commodities
    • Hedging swap exposures with futures contracts
    • Often represent positions of institutional investors
  3. Money Managers:
    • Professional traders managing client assets
    • Include CPOs, CTAs, hedge funds
    • Primarily speculative motives
    • Often trend followers or momentum traders
  4. Other Reportables:
    • Reportable traders not in above categories
    • Example: Trading companies without physical operations
  5. Non-Reportable Positions:
    • Same as in the Legacy report
    • Small positions held by retail traders

Significance of Each Classification

Understanding the motivations and behaviors of each trader category helps interpret their position changes:

  • Producers/Merchants: React to supply/demand fundamentals and often trade counter-trend
  • Swap Dealers: Often reflect institutional flows and longer-term structural positions
  • Money Managers: Tend to be trend followers and can amplify price movements
  • Non-Reportables: Sometimes used as a contrarian indicator (small traders often wrong at extremes)

4. Key Natural Resource Commodities

Energy Commodities

  1. Crude Oil (WTI and Brent)
    • Reporting codes: CL (NYMEX), CB (ICE)
    • Key considerations: Seasonal patterns, refinery demand, geopolitical factors
    • Notable COT patterns: Producer hedging often increases after price rallies
  2. Natural Gas
    • Reporting code: NG (NYMEX)
    • Key considerations: Extreme seasonality, weather sensitivity, storage reports
    • Notable COT patterns: Commercials often build hedges before winter season
  3. Heating Oil and Gasoline
    • Reporting codes: HO, RB (NYMEX)
    • Key considerations: Seasonal demand patterns, refinery throughput
    • Notable COT patterns: Refiners adjust hedge positions around maintenance periods

Precious Metals

  1. Gold
    • Reporting code: GC (COMEX)
    • Key considerations: Inflation expectations, currency movements, central bank buying
    • Notable COT patterns: Commercial shorts often peak during price rallies
  2. Silver
    • Reporting code: SI (COMEX)
    • Key considerations: Industrial vs. investment demand, gold ratio
    • Notable COT patterns: More volatile positioning than gold, managed money swings
  3. Platinum and Palladium
    • Reporting codes: PL, PA (NYMEX)
    • Key considerations: Auto catalyst demand, supply constraints
    • Notable COT patterns: Smaller markets with potentially more concentrated positions

Base Metals

  1. Copper
    • Reporting code: HG (COMEX)
    • Key considerations: Global economic growth indicator, construction demand
    • Notable COT patterns: Producer hedging often increases during supply surpluses
  2. Aluminum, Nickel, Zinc (COMEX/LME)
    • Note: CFTC reports cover U.S. exchanges only
    • Key considerations: Manufacturing demand, energy costs for production
    • Notable COT patterns: Limited compared to LME positioning data

Agricultural Resources

  1. Lumber
    • Reporting code: LB (CME)
    • Key considerations: Housing starts, construction activity
    • Notable COT patterns: Producer hedging increases during price spikes
  2. Cotton
    • Reporting code: CT (ICE)
    • Key considerations: Global textile demand, seasonal growing patterns
    • Notable COT patterns: Merchant hedging follows harvest cycles

5. Reading and Interpreting COT Data

Key Metrics to Monitor

  1. Net Positions
    • Definition: Long positions minus short positions for each trader category
    • Calculation: Net Position = Long Positions - Short Positions
    • Significance: Shows overall directional bias of each group
  2. Position Changes
    • Definition: Week-over-week changes in positions
    • Calculation: Current Net Position - Previous Net Position
    • Significance: Identifies new money flows and sentiment shifts
  3. Concentration Ratios
    • Definition: Percentage of open interest held by largest traders
    • Significance: Indicates potential market dominance or vulnerability
  4. Commercial/Non-Commercial Ratio
    • Definition: Ratio of commercial to non-commercial positions
    • Calculation: Commercial Net Position / Non-Commercial Net Position
    • Significance: Highlights potential divergence between hedgers and speculators
  5. Historical Percentiles
    • Definition: Current positions compared to historical ranges
    • Calculation: Typically 1-3 year lookback periods
    • Significance: Identifies extreme positioning relative to history

Basic Interpretation Approaches

  1. Trend Following with Managed Money
    • Premise: Follow the trend of managed money positions
    • Implementation: Go long when managed money increases net long positions
    • Rationale: Managed money often drives momentum in commodity markets
  2. Commercial Hedging Analysis
    • Premise: Commercials are "smart money" with fundamental insight
    • Implementation: Look for divergences between price and commercial positioning
    • Rationale: Commercials often take counter-trend positions at market extremes
  3. Extreme Positioning Identification
    • Premise: Extreme positions often precede market reversals
    • Implementation: Identify when any group reaches historical extremes (90th+ percentile)
    • Rationale: Crowded trades must eventually unwind
  4. Divergence Analysis
    • Premise: Divergences between trader groups signal potential turning points
    • Implementation: Watch when commercials and managed money move in opposite directions
    • Rationale: Opposing forces creating potential market friction

Visual Analysis Examples

Typical patterns to watch for:

  1. Bull Market Setup:
    • Managed money net long positions increasing
    • Commercial short positions increasing (hedging against higher prices)
    • Price making higher highs and higher lows
  2. Bear Market Setup:
    • Managed money net short positions increasing
    • Commercial long positions increasing (hedging against lower prices)
    • Price making lower highs and lower lows
  3. Potential Reversal Pattern:
    • Price making new highs/lows
    • Position extremes across multiple trader categories
    • Changes in positioning not confirming price moves (divergence)

6. Using COT Reports in Trading Strategies

Fundamental Integration Strategies

  1. Supply/Demand Confirmation
    • Approach: Use COT data to confirm fundamental analysis
    • Implementation: Check if commercials' positions align with known supply/demand changes
    • Example: Increasing commercial shorts in natural gas despite falling inventories could signal hidden supply
  2. Commercial Hedging Cycle Analysis
    • Approach: Track seasonal hedging patterns of producers
    • Implementation: Create yearly overlay charts of producer positions
    • Example: Oil producers historically increase hedging in Q2, potentially pressuring prices
  3. Index Roll Impact Assessment
    • Approach: Monitor position changes during index fund roll periods
    • Implementation: Track swap dealer positions before/after rolls
    • Example: Energy contracts often see price pressure during standard roll periods

Technical Integration Strategies

  1. COT Confirmation of Technical Patterns
    • Approach: Use COT data to validate chart patterns
    • Implementation: Confirm breakouts with appropriate positioning changes
    • Example: Gold breakout with increasing managed money longs has higher probability
  2. COT-Based Support/Resistance Levels
    • Approach: Identify price levels where significant position changes occurred
    • Implementation: Mark price points of major position accumulation
    • Example: Price levels where commercials accumulated large positions often act as support
  3. Sentiment Extremes as Contrarian Signals
    • Approach: Use extreme positioning as contrarian indicators
    • Implementation: Enter counter-trend when positions reach historical extremes (90th+ percentile)
    • Example: Enter long gold when managed money short positioning reaches 95th percentile historically

Market-Specific Strategies

  1. Energy Market Strategies
    • Crude Oil: Monitor producer hedging relative to current term structure
    • Natural Gas: Analyze commercial positioning ahead of storage injection/withdrawal seasons
    • Refined Products: Track seasonal changes in dealer/refiner positioning
  2. Precious Metals Strategies
    • Gold: Monitor swap dealer positioning as proxy for institutional sentiment
    • Silver: Watch commercial/managed money ratio for potential squeeze setups
    • PGMs: Analyze producer hedging for supply insights
  3. Base Metals Strategies
    • Copper: Track managed money positioning relative to global growth metrics
    • Aluminum/Nickel: Monitor producer hedging for production cost signals

Strategy Implementation Framework

  1. Data Collection and Processing
    • Download weekly COT data from CFTC website
    • Calculate derived metrics (net positions, changes, ratios)
    • Normalize data using Z-scores or percentile ranks
  2. Signal Generation
    • Define position thresholds for each trader category
    • Establish change-rate triggers
    • Create composite indicators combining multiple COT signals
  3. Trade Setup
    • Entry rules based on COT signals
    • Position sizing based on signal strength
    • Risk management parameters
  4. Performance Tracking
    • Track hit rate of COT-based signals
    • Monitor lead/lag relationship between positions and price
    • Regularly recalibrate thresholds based on performance

7. Advanced COT Analysis Techniques

Statistical Analysis Methods

  1. Z-Score Analysis
    • Definition: Standardized measure of position extremes
    • Calculation: Z-score = (Current Net Position - Average Net Position) / Standard Deviation
    • Application: Identify positions that are statistically extreme
    • Example: Gold commercials with Z-score below -2.0 often mark potential bottoms
  2. Percentile Ranking
    • Definition: Position ranking relative to historical range
    • Calculation: Current position's percentile within 1-3 year history
    • Application: More robust than Z-scores for non-normal distributions
    • Example: Natural gas managed money in 90th+ percentile often precedes price reversals
  3. Rate-of-Change Analysis
    • Definition: Speed of position changes rather than absolute levels
    • Calculation: Weekly RoC = (Current Position - Previous Position) / Previous Position
    • Application: Identify unusual accumulation or liquidation
    • Example: Crude oil swap dealers increasing positions by >10% in a week often signals institutional flows

Multi-Market Analysis

  1. Intermarket COT Correlations
    • Approach: Analyze relationships between related commodity positions
    • Implementation: Create correlation matrices of trader positions across markets
    • Example: Gold/silver commercial positioning correlation breakdown can signal sector rotation
  2. Currency Impact Assessment
    • Approach: Analyze COT data in currency futures alongside commodities
    • Implementation: Track correlations between USD positioning and commodity positioning
    • Example: Extreme USD short positioning often coincides with commodity long positioning
  3. Cross-Asset Confirmation
    • Approach: Verify commodity COT signals with related equity or bond positioning
    • Implementation: Compare energy COT data with energy equity positioning
    • Example: Divergence between oil futures positioning and energy equity positioning can signal sector disconnects

Machine Learning Applications

  1. Pattern Recognition Models
    • Approach: Train models to identify historical COT patterns preceding price moves
    • Implementation: Use classification algorithms to categorize current positioning
    • Example: Random forest models predicting 4-week price direction based on COT features
  2. Clustering Analysis
    • Approach: Group historical COT data to identify common positioning regimes
    • Implementation: K-means clustering of multi-dimensional COT data
    • Example: Identifying whether current gold positioning resembles bull or bear market regimes
  3. Predictive Modeling
    • Approach: Create forecasting models for future price movements
    • Implementation: Regression models using COT variables as features
    • Example: LSTM networks predicting natural gas price volatility from COT positioning trends

Advanced Visualization Techniques

  1. COT Heat Maps
    • Description: Color-coded visualization of position extremes across markets
    • Application: Quickly identify markets with extreme positioning
    • Example: Heat map showing all commodity markets with positioning in 90th+ percentile
  2. Positioning Clock
    • Description: Circular visualization showing position cycle status
    • Application: Track position cycles within commodities
    • Example: Natural gas positioning clock showing seasonal accumulation patterns
  3. 3D Surface Charts
    • Description: Three-dimensional view of positions, price, and time
    • Application: Identify complex patterns not visible in 2D
    • Example: Surface chart showing commercial crude oil hedger response to price changes over time

8. Limitations and Considerations

Reporting Limitations

  1. Timing Delays
    • Issue: Data reflects positions as of Tuesday, released Friday
    • Impact: Significant market moves can occur between reporting and release
    • Mitigation: Combine with real-time market indicators
  2. Classification Ambiguities
    • Issue: Some traders could fit in multiple categories
    • Impact: Classification may not perfectly reflect true market structure
    • Mitigation: Focus on trends rather than absolute values
  3. Threshold Limitations
    • Issue: Only positions above reporting thresholds are included
    • Impact: Incomplete picture of market, especially for smaller commodities
    • Mitigation: Consider non-reportable positions as context

Interpretational Challenges

  1. Correlation vs. Causation
    • Issue: Position changes may reflect rather than cause price moves
    • Impact: Following positioning blindly can lead to false signals
    • Mitigation: Use COT as confirmation rather than primary signal
  2. Structural Market Changes
    • Issue: Market participant behavior evolves over time
    • Impact: Historical relationships may break down
    • Mitigation: Use adaptive lookback periods and recalibrate regularly
  3. Options Positions Not Included
    • Issue: Standard COT reports exclude options positions
    • Impact: Incomplete view of market exposure, especially for hedgers
    • Mitigation: Consider using COT-CIT Supplemental reports for context
  4. Exchange-Specific Coverage
    • Issue: Reports cover only U.S. exchanges
    • Impact: Incomplete picture for globally traded commodities
    • Mitigation: Consider parallel data from other exchanges where available

Common Misinterpretations

  1. Assuming Commercials Are Always Right
    • Misconception: Commercial positions always lead price
    • Reality: Commercials can be wrong on timing and magnitude
    • Better approach: Look for confirmation across multiple signals
  2. Ignoring Position Size Context
    • Misconception: Absolute position changes are what matter
    • Reality: Position changes relative to open interest provide better context
    • Better approach: Normalize position changes by total open interest
  3. Over-Relying on Historical Patterns
    • Misconception: Historical extremes will always work the same way
    • Reality: Market regimes change, affecting positioning impact
    • Better approach: Adjust expectations based on current volatility regime
  4. Neglecting Fundamental Context
    • Misconception: COT data is sufficient standalone
    • Reality: Positioning often responds to fundamental catalysts
    • Better approach: Integrate COT analysis with supply/demand factors

Integration into Trading Workflow

  1. Weekly Analysis Routine
    • Friday: Review new COT data upon release
    • Weekend: Comprehensive analysis and strategy adjustments
    • Monday: Implement new positions based on findings
  2. Framework for Position Decisions
    • Primary signal: Identify extremes in relevant trader categories
    • Confirmation: Check for divergences with price action
    • Context: Consider fundamental backdrop
    • Execution: Define entry, target, and stop parameters
  3. Documentation Process
    • Track all COT-based signals in trading journal
    • Record hit/miss rate and profitability
    • Note market conditions where signals work best/worst
  4. Continuous Improvement
    • Regular backtest of signal performance
    • Adjustment of thresholds based on market conditions
    • Integration of new data sources as available

Case Studies: Practical Applications

  1. Natural Gas Winter Strategy
    • Setup: Monitor commercial positioning ahead of withdrawal season
    • Signal: Commercial net long position > 70th percentile
    • Implementation: Long exposure with technical price confirmation
    • Historical performance: Positive expectancy during 2015-2023 period
  2. Gold Price Reversal Strategy
    • Setup: Watch for extreme managed money positioning
    • Signal: Managed money net short position > 85th percentile historically
    • Implementation: Contrarian long position with tiered entry
    • Risk management: Stop loss at recent swing point
  3. Crude Oil Price Collapse Warning System
    • Setup: Monitor producer hedging acceleration
    • Signal: Producer short positions increasing by >10% over 4 weeks
    • Implementation: Reduce long exposure or implement hedging strategies
    • Application: Successfully flagged risk periods in 2014, 2018, and 2022

By utilizing these resources and implementing the strategies outlined in this guide, natural resource investors and traders can gain valuable insights from COT data to enhance their market analysis and decision-making processes.

Market Neutral (Oversold)
Based on the latest 13 weeks of non-commercial positioning data.
📊 COT Sentiment Analysis Guide

This guide helps traders understand how to interpret Commitments of Traders (COT) reports to generate potential Buy, Sell, or Neutral signals using market positioning data.

🧠 How It Works
  • Recent Trend Detection: Tracks net position and rate of change (ROC) over the last 13 weeks.
  • Overbought/Oversold Check: Compares current net positions to a 1-year range using percentiles.
  • Strength Confirmation: Validates if long or short positions are dominant enough for a signal.
✅ Signal Criteria
Condition Signal
Net ↑ for 13+ weeks AND ROC ↑ for 13+ weeks AND strong long dominance Buy
Net ↓ for 13+ weeks AND ROC ↓ for 13+ weeks AND strong short dominance Sell
Net in top 20% of 1-year range AND net uptrend â‰Ĩ 3 Neutral (Overbought)
Net in bottom 20% of 1-year range AND net downtrend â‰Ĩ 3 Neutral (Oversold)
None of the above conditions met Neutral
🧭 Trader Tips
  • Trend traders: Follow Buy/Sell signals when all trend and strength conditions align.
  • Contrarian traders: Use Neutral (Overbought/Oversold) flags to anticipate reversals.
  • Swing traders: Use sentiment as a filter to increase trade confidence.
Example:
Net positions rising, strong long dominance, in top 20% of historical range.
Result: Neutral (Overbought) — uptrend may be too crowded.
  • COT data is delayed (released on Friday, based on Tuesday's positions) - it's not real-time.
  • Combine with price action, FVG, liquidity, or technical indicators for best results.
  • Use percentile filters to avoid buying at extreme highs or selling at extreme lows.

Trading Strategy for Maryland Compliance REC Tier 1 (IFED) Based on COT Report Analysis

This strategy is designed for retail traders and market investors looking to trade Maryland Compliance REC Tier 1 futures (IFED) based on the Commitments of Traders (COT) report. It combines COT data analysis with fundamental and technical factors to develop a well-rounded trading approach.

I. Understanding Maryland Compliance REC Tier 1 and the COT Report:

  • Maryland Compliance REC Tier 1: Represents renewable energy credits generated by Tier 1 renewable energy sources in Maryland. These credits are used by electricity suppliers to meet state-mandated Renewable Portfolio Standards (RPS). Therefore, the price of RECs is driven by the supply and demand related to Maryland's RPS targets.
  • COT Report: A weekly report published by the CFTC (Commodity Futures Trading Commission) that details the positions held by different types of traders in futures markets. For IFED, key trader categories are:
    • Commercial Traders (Hedgers): These are typically electricity suppliers, renewable energy generators, and other entities that use RECs to hedge their physical positions or manage compliance with RPS mandates.
    • Non-Commercial Traders (Speculators): These are typically hedge funds, managed money, and other large speculators who trade for profit.
    • Retail Traders: This report lumps them in with others, but we are using COT report to find the direction of large speculators to get a sense of the market.

II. Core Strategy: Following the Smart Money

The central premise of this strategy is to identify trends and potential turning points by analyzing the positioning of Commercial and Non-Commercial traders in the COT report. We assume that Commercial traders (hedgers) have a deeper understanding of the fundamental supply and demand dynamics, while Non-Commercial traders (large speculators) can drive momentum and influence price swings.

III. Steps of the Trading Strategy:

  1. COT Report Data Acquisition:

    • Source: Download the Legacy Futures Only COT report from the CFTC website (cftc.gov). The relevant code is IFED.
    • Frequency: Review the report every Friday, which reflects positions held as of the preceding Tuesday.
    • Data Points: Extract the following data for IFED:
      • Net positions of Commercial Traders (Short + Long)
      • Net positions of Non-Commercial Traders (Short + Long)
  2. COT Data Analysis:

    • Trend Identification:
      • Commercial Traders: A consistent increase in net short positions by Commercial traders suggests a potentially overbought market and a possible price correction. A consistent increase in net long positions by Commercial traders suggests a potentially oversold market and a possible price increase.
      • Non-Commercial Traders: A consistent increase in net long positions by Non-Commercial traders suggests bullish sentiment and potential upward price momentum. A consistent increase in net short positions suggests bearish sentiment and potential downward price momentum.
    • Divergence Signals: Look for divergences between the price of IFED and the net positions of Commercial or Non-Commercial traders. For example:
      • Bearish Divergence: IFED price makes a new high, but Non-Commercial traders are reducing their net long positions (or increasing net short positions). This suggests waning bullish momentum and a potential price reversal.
      • Bullish Divergence: IFED price makes a new low, but Non-Commercial traders are reducing their net short positions (or increasing net long positions). This suggests waning bearish momentum and a potential price reversal.
    • Extreme Positioning: Identify instances where Commercial or Non-Commercial traders hold historically large net long or net short positions. These extremes can indicate overbought or oversold conditions and potential turning points. (Establish a historical baseline for comparison - e.g., look back 3-5 years).
    • Commitment of Traders Index (COT Index): This is a tool to measure the current position relative to the historical position.
      • Formula = ((Current Net Position – Lowest Net Position over Lookback Period) / (Highest Net Position over Lookback Period – Lowest Net Position over Lookback Period)) * 100
      • Consider a lookback period of 52 weeks
      • A reading above 80 suggests market is likely overbought
      • A reading below 20 suggests market is likely oversold
  3. Fundamental Analysis:

    • Maryland RPS Requirements: Monitor changes in Maryland's RPS targets and the penalties for non-compliance. Stricter RPS mandates typically lead to increased demand for RECs and higher prices.
    • Renewable Energy Generation: Track the output of renewable energy facilities in Maryland (solar, wind, etc.). Higher generation can increase REC supply and potentially lower prices.
    • Legislation and Regulation: Stay informed about any new legislation or regulatory changes that could impact the REC market.
    • Technological change: Adoption of new renewable energy and the cost of generation.
  4. Technical Analysis:

    • Price Charts: Use candlestick charts to identify trends, support and resistance levels, and potential entry/exit points.
    • Moving Averages: Use moving averages (e.g., 50-day, 200-day) to confirm trends and identify potential areas of support/resistance.
    • Momentum Indicators: Use indicators like RSI (Relative Strength Index) or MACD (Moving Average Convergence Divergence) to identify overbought/oversold conditions and potential trend reversals.
    • Volume: Analyze volume to confirm the strength of price movements. High volume on a breakout or breakdown suggests a stronger signal.
    • Seasonality: Consider seasonal patterns in REC prices (if any). Demand might be higher during certain periods of the year.
  5. Trade Execution and Risk Management:

    • Entry Signals: Combine COT analysis with fundamental and technical signals to generate entry signals. For example:
      • Bullish Scenario: Commercial traders are reducing net short positions, Non-Commercial traders are increasing net long positions, Maryland RPS requirements are increasing, and the price breaks above a key resistance level with strong volume.
      • Bearish Scenario: Commercial traders are increasing net short positions, Non-Commercial traders are reducing net long positions, renewable energy generation is high, and the price breaks below a key support level with strong volume.
    • Stop-Loss Orders: Place stop-loss orders to limit potential losses. The placement of stop-loss orders should be based on technical levels (e.g., below a recent swing low).
    • Take-Profit Orders: Set take-profit orders based on technical levels, price targets, or anticipated changes in fundamental conditions.
    • Position Sizing: Manage risk by limiting the size of each trade to a small percentage of your trading capital (e.g., 1-2%).
    • Risk-Reward Ratio: Aim for a risk-reward ratio of at least 1:2 or 1:3. This means you should aim to make at least twice or three times as much as you risk on each trade.

IV. Example Trade Scenario:

  • Scenario: It's mid-summer, and the COT report reveals that Non-Commercial traders have significantly increased their net long positions in IFED over the past few weeks. The price of IFED has been trending upwards, but is currently consolidating near a resistance level. Fundamental analysis indicates that Maryland's RPS targets are set to increase next year, and solar generation has been lower than expected due to cloudy weather.
  • Action:
    • COT Analysis: Bullish - Non-Commercial traders are strongly bullish.
    • Fundamental Analysis: Bullish - Higher RPS targets and lower solar generation suggest increased demand and potentially higher prices.
    • Technical Analysis: Watch for a break above the resistance level with strong volume.
    • Entry: Enter a long position if the price breaks above the resistance level with high volume.
    • Stop-Loss: Place a stop-loss order below the recent swing low.
    • Take-Profit: Set a take-profit order based on a potential price target (e.g., a Fibonacci extension level or a previous high).

V. Important Considerations and Cautions:

  • Market Volatility: REC markets can be volatile. Be prepared for price swings and manage your risk accordingly.
  • Liquidity: Liquidity in the IFED market can be limited, especially during off-peak hours. This can make it more difficult to enter and exit positions at desired prices.
  • Data Accuracy: While the COT report is a valuable tool, it's not perfect. The data is based on self-reported positions, and there can be reporting errors or delays.
  • Correlation vs. Causation: Just because Commercial or Non-Commercial traders are positioned a certain way doesn't guarantee that the price will move in that direction. Correlation does not equal causation.
  • Due Diligence: Conduct your own independent research and analysis before making any trading decisions. This strategy is a starting point, not a guaranteed path to profits.
  • Regulatory Changes: REC market are often impacted by regulatory changes that you should follow closely.

VI. Continuous Improvement:

  • Backtesting: Backtest this strategy using historical data to evaluate its performance and identify areas for improvement.
  • Adaptability: The REC market is dynamic. Be prepared to adapt your strategy as market conditions change.
  • Learning: Continuously learn about the REC market, COT report analysis, and trading techniques.

VII. Disclaimer:

This strategy is for educational purposes only and should not be considered financial advice. Trading involves risk, and you could lose money. Always consult with a qualified financial advisor before making any investment decisions.