BitcoinWorld AUD/JPY Forecast: Resilient Bullish Momentum Holds Firm Above Critical 100-Day EMA Despite Recent Softening Forex markets witnessed the AUD/JPY currencyBitcoinWorld AUD/JPY Forecast: Resilient Bullish Momentum Holds Firm Above Critical 100-Day EMA Despite Recent Softening Forex markets witnessed the AUD/JPY currency

AUD/JPY Forecast: Resilient Bullish Momentum Holds Firm Above Critical 100-Day EMA Despite Recent Softening

2026/02/26 15:40
7 min read

BitcoinWorld

AUD/JPY Forecast: Resilient Bullish Momentum Holds Firm Above Critical 100-Day EMA Despite Recent Softening

Forex markets witnessed the AUD/JPY currency pair softening to near the 111.00 psychological level in recent Asian trading sessions, yet technical analysis reveals the cross maintains resilient bullish momentum above its critical 100-day Exponential Moving Average. This development comes amid shifting monetary policy expectations from both the Reserve Bank of Australia and the Bank of Japan, creating a complex trading environment for currency speculators and institutional investors alike. Market participants globally monitor this currency pair closely, as it often serves as a key barometer for Asia-Pacific risk sentiment and commodity currency flows.

AUD/JPY Technical Analysis: Current Price Action and Key Levels

The Australian dollar to Japanese yen exchange rate currently trades around 111.00, representing a modest retreat from recent highs near 111.50. However, the pair demonstrates remarkable technical strength by maintaining position above the crucial 100-day Exponential Moving Average, currently situated around 110.40. This moving average has provided consistent support throughout the past quarter, establishing itself as a significant technical benchmark for trend determination. Furthermore, the 50-day EMA converges around 110.80, creating a potential support zone between these two moving averages.

Technical indicators present a mixed but generally constructive picture for AUD/JPY bulls. The Relative Strength Index (RSI) currently reads 58, indicating moderate bullish momentum without entering overbought territory. Meanwhile, the Moving Average Convergence Divergence (MACD) histogram shows positive momentum, with the MACD line positioned above its signal line. Trading volume patterns reveal increased activity during Asian sessions, particularly around the 111.00 level, suggesting this represents a key psychological battleground between buyers and sellers.

Key Technical Levels for AUD/JPY

Support LevelsResistance Levels
100-day EMA: 110.40Recent High: 111.50
Psychological: 110.00Year-to-Date High: 112.20
200-day EMA: 109.80Major Resistance: 112.50

Fundamental Drivers: Central Bank Policies and Economic Data

Multiple fundamental factors currently influence AUD/JPY price action, creating a complex interplay between Australian and Japanese economic conditions. The Reserve Bank of Australia maintains a relatively hawkish stance compared to global peers, with market participants pricing in potential rate adjustments based on persistent inflation metrics. Australian employment data continues to demonstrate resilience, while commodity exports, particularly iron ore and natural gas, provide underlying support for the Australian dollar.

Conversely, the Bank of Japan maintains ultra-accommodative monetary policy despite recent adjustments to its yield curve control framework. Japanese inflation remains above the central bank’s 2% target, yet policymakers exercise caution regarding policy normalization timing. This divergence in central bank approaches creates natural momentum for AUD/JPY appreciation, as interest rate differentials favor the Australian dollar. However, risk sentiment fluctuations and geopolitical developments frequently introduce volatility to this currency pair.

Recent Economic Data Impact

Several key economic releases have shaped recent AUD/JPY movements:

  • Australian Employment Change: February data showed stronger-than-expected job creation
  • Japanese Wage Growth: Spring wage negotiations resulted in substantial increases
  • Commodity Prices: Iron ore stability supports Australian export revenues
  • Risk Sentiment: Global equity market performance influences carry trade dynamics

Market Structure and Trading Volume Analysis

Institutional trading patterns reveal sophisticated positioning around the AUD/JPY pair. Commitment of Traders reports indicate that leveraged funds maintain net long positions, though recent weeks have seen some profit-taking activity. Meanwhile, asset managers demonstrate increased interest in Australian dollar exposure as a diversification play against traditional reserve currencies. Japanese retail traders, known for their significant forex market participation, show mixed sentiment with both long and short positions accumulating around current levels.

Trading volume distribution displays distinct patterns across global sessions. Asian trading hours typically account for approximately 45% of total AUD/JPY volume, reflecting the pair’s regional significance. European sessions contribute around 30% of volume, while North American participation represents the remaining 25%. This volume distribution creates predictable liquidity patterns that experienced traders incorporate into their execution strategies. Notably, volatility tends to increase during session overlaps, particularly the Asian-European handover period.

Historical Context and Comparative Performance

The AUD/JPY pair exhibits distinct seasonal patterns that informed traders monitor closely. Historically, the currency cross demonstrates strength during the first and fourth quarters, often correlating with commodity price movements and Japanese fiscal year-end flows. Comparative analysis against other yen crosses reveals AUD/JPY outperforming GBP/JPY and EUR/JPY year-to-date, though trailing USD/JPY’s remarkable ascent. This relative performance highlights the Australian dollar’s unique position as both a commodity currency and a higher-yielding alternative within developed markets.

Longer-term charts provide essential context for current price action. The monthly timeframe shows AUD/JPY trading within a broad range between 105.00 and 115.00 for the past three years. Within this range, the 100-day EMA has consistently served as a reliable trend indicator, with sustained breaks above or below this level often preceding significant directional moves. Currently, the pair maintains position in the upper half of this multi-year range, suggesting underlying bullish bias despite recent consolidation.

Expert Technical Perspective

Senior currency analysts emphasize the importance of multi-timeframe analysis when evaluating AUD/JPY prospects. The weekly chart shows the pair respecting an ascending channel that began forming in late 2023, with the lower boundary currently aligning with the 100-day EMA. This confluence of technical factors creates a high-probability support zone that has attracted buying interest during recent pullbacks. Furthermore, Fibonacci retracement levels from the 2023 low to 2024 high indicate that the current price action represents a shallow correction within a broader uptrend.

Risk Factors and Market Sentiment Indicators

Several risk factors warrant consideration for AUD/JPY traders monitoring the 111.00 level. Geopolitical developments in the Asia-Pacific region frequently impact this currency pair, particularly tensions affecting major trade routes. Additionally, sudden shifts in global risk appetite can trigger rapid yen movements as investors unwind carry trades. Commodity price volatility represents another significant factor, with Australian dollar sensitivity to iron ore, copper, and agricultural exports.

Market sentiment indicators provide valuable context for current price action. The VIX index, often called the “fear gauge,” maintains relatively subdued levels, supporting carry trade strategies that benefit AUD/JPY. Meanwhile, bond yield differentials between Australia and Japan continue to favor the Australian dollar, though recent narrowing has moderated appreciation momentum. Options market data reveals balanced positioning, with neither calls nor puts demonstrating extreme pricing, suggesting market participants anticipate continued range-bound trading in the near term.

Conclusion

The AUD/JPY forecast maintains a cautiously optimistic outlook despite recent softening to the 111.00 level. Technical analysis confirms the pair’s resilient bullish momentum above the critical 100-day Exponential Moving Average, establishing a firm foundation for potential appreciation. Fundamental drivers, particularly divergent central bank policies between Australia and Japan, continue supporting the Australian dollar’s relative strength. Traders should monitor the 110.40-110.80 support zone closely, as sustained defense of this area would validate the ongoing bullish thesis. While short-term consolidation appears likely, the broader technical structure suggests AUD/JPY possesses underlying strength that may propel the pair toward year-to-date highs upon resolution of current market uncertainties.

FAQs

Q1: What does the 100-day EMA indicate for AUD/JPY?
The 100-day Exponential Moving Average serves as a crucial technical indicator, currently providing dynamic support around 110.40. Sustained trading above this level typically signals bullish momentum, while breaks below may indicate trend reversal.

Q2: Why is AUD/JPY considered a risk sentiment indicator?
This currency pair reflects the Australian dollar’s commodity-linked, growth-sensitive nature against the Japanese yen’s traditional safe-haven status. Consequently, AUD/JPY often appreciates during risk-on periods and declines during market stress.

Q3: How do central bank policies affect AUD/JPY?
Divergent monetary policies create natural momentum, with hawkish RBA expectations supporting AUD while accommodative BOJ policy weighs on JPY. Interest rate differentials significantly influence capital flows between these currencies.

Q4: What key levels should traders monitor?
Traders focus on the 100-day EMA at 110.40, psychological levels at 110.00 and 111.00, and year-to-date highs near 112.20. These levels frequently determine short-term direction and provide trading opportunities.

Q5: How does commodity pricing impact AUD/JPY?
Australian dollar strength correlates with key export commodities, particularly iron ore, natural gas, and agricultural products. Price movements in these markets frequently translate to AUD/JPY volatility, especially during Asian trading hours.

This post AUD/JPY Forecast: Resilient Bullish Momentum Holds Firm Above Critical 100-Day EMA Despite Recent Softening first appeared on BitcoinWorld.

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