Daniel Opoku
Daniel Opoku
4.6 (3)
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2 年
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Daniel Opoku
已发布文章Developing a Trading Strategy: Using a Volume-Bound Approach
Developing a Trading Strategy: Using a Volume-Bound Approach

In the world of technical analysis, price often takes center stage. Traders meticulously map out support, resistance, and patterns, yet frequently ignore the critical force that drives these movements: volume. This article delves into a novel approach to volume analysis: the Volume Boundary indicator. This transformation, utilizing sophisticated smoothing functions like the butterfly and triple sine curves, allows for clearer interpretation and the development of systematic trading strategies.

Daniel Opoku
已发布文章Developing a Trading Strategy: The Flower Volatility Index Trend-Following Approach
Developing a Trading Strategy: The Flower Volatility Index Trend-Following Approach

The relentless quest to decode market rhythms has led traders and quantitative analysts to develop countless mathematical models. This article has introduced the Flower Volatility Index (FVI), a novel approach that transforms the mathematical elegance of Rose Curves into a functional trading tool. Through this work, we have shown how mathematical models can be adapted into practical trading mechanisms capable of supporting both analysis and decision-making in real market conditions.

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Daniel Opoku
已发布文章Developing Trading Strategy: Pseudo Pearson Correlation Approach
Developing Trading Strategy: Pseudo Pearson Correlation Approach

Generating new indicators from existing ones offers a powerful way to enhance trading analysis. By defining a mathematical function that integrates the outputs of existing indicators, traders can create hybrid indicators that consolidate multiple signals into a single, efficient tool. This article introduces a new indicator built from three oscillators using a modified version of the Pearson correlation function, which we call the Pseudo Pearson Correlation (PPC). The PPC indicator aims to quantify the dynamic relationship between oscillators and apply it within a practical trading strategy.

Daniel Opoku
已发布文章Developing a Trading Strategy: The Triple Sine Mean Reversion Method
Developing a Trading Strategy: The Triple Sine Mean Reversion Method

This article introduces the Triple Sine Mean Reversion Method, a trading strategy built upon a new mathematical indicator — the Triple Sine Oscillator (TSO). The TSO is derived from the sine cube function, which oscillates between –1 and +1, making it suitable for identifying overbought and oversold market conditions. Overall, the study demonstrates how mathematical functions can be transformed into practical trading tools.

Daniel Opoku
已发布文章Developing a Trading Strategy: The Butterfly Oscillator Method
Developing a Trading Strategy: The Butterfly Oscillator Method

In this article, we demonstrated how the fascinating mathematical concept of the Butterfly Curve can be transformed into a practical trading tool. We constructed the Butterfly Oscillator and built a foundational trading strategy around it. The strategy effectively combines the oscillator's unique cyclical signals with traditional trend confirmation from moving averages, creating a systematic approach for identifying potential market entries.

Daniel Opoku
已发布文章Building a Trading System (Part 5): Managing Gains Through Structured Trade Exits
Building a Trading System (Part 5): Managing Gains Through Structured Trade Exits

For many traders, it's a familiar pain point: watching a trade come within a whisker of your profit target, only to reverse and hit your stop-loss. Or worse, seeing a trailing stop close you out at breakeven before the market surges toward your original target. This article focuses on using multiple entries at different Reward-to-Risk Ratios to systematically secure gains and reduce overall risk exposure.

Daniel Opoku
已发布文章Building a Trading System (Part 4): How Random Exits Influence Trading Expectancy
Building a Trading System (Part 4): How Random Exits Influence Trading Expectancy

Many traders have experienced this situation, often stick to their entry criteria but struggle with trade management. Even with the right setups, emotional decision-making—such as panic exits before trades reach their take-profit or stop-loss levels—can lead to a declining equity curve. How can traders overcome this issue and improve their results? This article will address these questions by examining random win-rates and demonstrating, through Monte Carlo simulation, how traders can refine their strategies by taking profits at reasonable levels before the original target is reached.

Daniel Opoku
已发布文章Developing Trading Strategies with the Parafrac and Parafrac V2 Oscillators: Single Entry Performance Insights
Developing Trading Strategies with the Parafrac and Parafrac V2 Oscillators: Single Entry Performance Insights

This article introduces the ParaFrac Oscillator and its V2 model as trading tools. It outlines three trading strategies developed using these indicators. Each strategy was tested and optimized to identify their strengths and weaknesses. Comparative analysis highlighted the performance differences between the original and V2 models.

Daniel Opoku
已发布文章The Parafrac V2 Oscillator: Integrating Parabolic SAR with Average True Range
The Parafrac V2 Oscillator: Integrating Parabolic SAR with Average True Range

The Parafrac V2 Oscillator is an advanced technical analysis tool that integrates the Parabolic SAR with the Average True Range (ATR) to overcome limitations of its predecessor, which relied on fractals and was prone to signal spikes overshadowing previous and current signals. By leveraging ATR’s volatility measure, the version 2 offers a smoother, more reliable method for detecting trends, reversals, and divergences, helping traders reduce chart congestion and analysis paralysis.

Daniel Opoku
已发布文章Building a Trading System (Part 3): Determining Minimum Risk Levels for Realistic Profit Targets
Building a Trading System (Part 3): Determining Minimum Risk Levels for Realistic Profit Targets

Every trader's ultimate goal is profitability, which is why many set specific profit targets to achieve within a defined trading period. In this article, we will use Monte Carlo simulations to determine the optimal risk percentage per trade needed to meet trading objectives. The results will help traders assess whether their profit targets are realistic or overly ambitious. Finally, we will discuss which parameters can be adjusted to establish a practical risk percentage per trade that aligns with trading goals.

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Daniel Opoku
已发布文章Parafrac Oscillator: Combination of Parabolic and Fractal Indicator
Parafrac Oscillator: Combination of Parabolic and Fractal Indicator

We will explore how the Parabolic SAR and the Fractal indicator can be combined to create a new oscillator-based indicator. By integrating the unique strengths of both tools, traders can aim at developing a more refined and effective trading strategy.

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Daniel Opoku
已发布文章Building a Trading System (Part 2): The Science of Position Sizing
Building a Trading System (Part 2): The Science of Position Sizing

Even with a positive-expectancy system, position sizing determines whether you thrive or collapse. It’s the pivot of risk management—translating statistical edges into real-world results while safeguarding your capital.

Daniel Opoku
已发布文章Building a Trading System (Part 1): A Quantitative Approach
Building a Trading System (Part 1): A Quantitative Approach

Many traders evaluate strategies based on short-term performance, often abandoning profitable systems too early. Long-term profitability, however, depends on positive expectancy through optimized win rate and risk-reward ratio, along with disciplined position sizing. These principles can be validated using Monte Carlo simulation in Python with back-tested metrics to assess whether a strategy is robust or likely to fail over time.

Daniel Opoku
已发布代码LotSize Calculation
这是一个简单的脚本文件,可使用风险百分比方法或实际风险金额计算手数。
Daniel Opoku
已发布代码LotSize Calculation
This is a simple script file to compute lot size either using risk percentage approach or the actual amount to risk.
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Daniel Opoku 已发布产品

149.99 USD

探索智能、专业的交易工具 Tabow 3.1 Tabow 3.1 是一款精准设计的智能交易顾问(EA),通过使用 Awesome Oscillator(震荡指标)帮助交易者识别潜在的顶部和底部。它仅在满足特定条件(如阈值、阈值变化及其他附加规则)时才执行交易,从而提供高质量的交易机会。 EA 每次只开一个订单,并结合精心设置的止盈(TP)和止损(SL)机制,确保稳健的风险管理。TP 和 SL 采用四位点差输入格式,但 Tabow 3.1 会自动识别并适应五位点差的经纪商。 这不是快速致富的工具,而是一款反映专业交易策略纪律性的工具,可能并不适合所有人。 免费试用两个月 在 Wamek,我们相信您的血汗钱只应该用于值得信赖的工具。因此,Tabow 3.1 将于 2025年4月30日至6月30日 免费提供试用。请利用这段时间: 在您的经纪商平台上进行测试 评估其在您喜欢的交易品种上的表现 根据您的策略微调设置 试用期结束后将正式定价,现在正是无风险体验的最佳时机。 关键功能与设置 附加风险管理工具 TimeBaseTakeProfit

Daniel Opoku 已发布产品

149.99 USD

探索智能、专业的交易工具 Tabow 3.1 Tabow 3.1 是一款精准设计的智能交易顾问(EA),通过使用 Awesome Oscillator(震荡指标)帮助交易者识别潜在的顶部和底部。它仅在满足特定条件(如阈值、阈值变化及其他附加规则)时才执行交易,从而提供高质量的交易机会。 EA 每次只开一个订单,并结合精心设置的止盈(TP)和止损(SL)机制,确保稳健的风险管理。TP 和 SL 采用四位点差输入格式,但 Tabow 3.1 会自动识别并适应五位点差的经纪商。 这不是快速致富的工具,而是一款反映专业交易策略纪律性的工具,可能并不适合所有人。 免费试用两个月 在 Wamek,我们相信您的血汗钱只应该用于值得信赖的工具。因此,Tabow 3.1 将于 2025年4月30日至6月30日 免费提供试用。请利用这段时间: 在您的经纪商平台上进行测试 评估其在您喜欢的交易品种上的表现 根据您的策略微调设置 试用期结束后将正式定价,现在正是无风险体验的最佳时机。 关键功能与设置 附加风险管理工具 TimeBaseTakeProfit

Daniel Opoku
已发布代码Withdrawal Tracking
这是一段代码,可添加到现有的智能交易系统中,用于跟踪从运行智能交易系统的账户中提取的资金。它可以帮助用户监控特定账户的取款情况。
Daniel Opoku
已发布代码Withdrawal Tracking
This is a piece of code to add to an existing Expert advisor to track withdrawals from your account where the EA is running. It helps the user to monitor his or her withdrawals from a particular account.
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Daniel Opoku 已发布产品

解锁机构级交易策略,使用我们的先进供需区指标! 利用我们的 供需区指标 ,掌握机构交易策略,精准识别金融市场中的 高胜率买卖点 !通过定位机构资金的买入和卖出区域,该指标让您能与市场大玩家同步交易,把握重大趋势反转,提升盈利机会! 为什么这款指标是专业交易者的必备工具? 无限历史区域扫描 – 自动检测并可视化关键的供需区,无需手动分析,适用于任何时间周期和资产。 精准锁定高盈利区域 – 该指标能清晰标记市场供需区,帮助您预测市场反转和突破,提高交易成功率。 自动扫描K线 – 实时信号提示潜在的入场点,让交易决策更加智能化。 清晰的颜色编码区域 : 粉色区域(供应区) – 突破后变成需求区,但颜色保持不变。 天蓝色区域(需求区) – 突破后变成供应区,颜色仍保持不变。 自动识别关键交易模式 : Drop-Base-Drop(DBD) & Rally-Base-Drop(RBD) – 供应区。 Drop-Base-Rally(DBR) & Rally-Base-Rally(RBR) – 需求区。 掌握机构交易者的优势

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