Abstract This study uses a recently developed airborne Doppler radar database to explore how vortex misalignment is related to tropical cyclone (TC) precipitation structure and intensity change. It is found that for relatively weak TCs, defined here as storms with a peak 10-m wind of 65 kt (1 kt = 0.51 m s−1) or less, the magnitude of vortex tilt is closely linked to the rate of subsequent TC intensity change, especially over the next 12–36 h. In strong TCs, defined as storms with a peak 10-m wind greater than 65 kt, vortex tilt magnitude is only weakly correlated with TC intensity change. Based on these findings, this study focuses on how vortex tilt is related to TC precipitation structure and intensity change in weak TCs. To illustrate how the TC precipitation structure is related to the magnitude of vortex misalignment, weak TCs are divided into two groups: small-tilt and large-tilt TCs. In large-tilt TCs, storms display a relatively large radius of maximum wind, the precipitation structure is asymmetric, and convection occurs more frequently near the midtropospheric TC center than the lower-tropospheric TC center. Alternatively, small-tilt TCs exhibit a greater areal coverage of precipitation inward of a relatively small radius of maximum wind. Greater rates of TC intensification, including rapid intensification, are shown to occur preferentially for TCs with greater vertical alignment and storms in relatively favorable environments. Significance StatementAccurately predicting tropical cyclone (TC) intensity change is challenging. This is particularly true for storms that undergo rapid intensity changes. Recent numerical modeling studies have suggested that vortex vertical alignment commonly precedes the onset of rapid intensification; however, this consensus is not unanimous. Until now, there has not been a systematic observational analysis of the relationship between vortex misalignment and TC intensity change. This study addresses this gap using a recently developed airborne radar database. We show that the degree of vortex misalignment is a useful predictor for TC intensity change, but primarily for weak storms. In these cases, more aligned TCs exhibit precipitation patterns that favor greater intensification rates. Future work should explore the causes of changes in vortex alignment.
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Eyewall Replacement Cycles as a Structural Driver of the Bimodal Distribution of Tropical Cyclone Lifetime Maximum Intensity
Abstract Tropical cyclone (TC) lifetime maximum intensity exhibits a distinct bimodal distribution, with peaks at tropical storm and major hurricane strength. Using a best‐track‐based algorithm to identify eyewall replacement cycle (ERC) storms, we show that ERC storms overwhelmingly populate the high‐intensity peak. Both reintensifying and non‐reintensifying ERC storms contribute, but those unable to reintensify cluster near 120–140 kt, defining the secondary peak. In contrast, reintensifying ERC storms can achieve higher intensities when moving over warmer seas with greater ocean heat content and reduced vertical wind shear. The scarcity of storms at intermediate intensities (85–105 kt) arises from rapid intensification (RI), which drives systems quickly through this range. These results clarify that while RI explains the trough at mid‐intensities, ERCs, by halting or enabling further strengthening, shape the high‐intensity peak and its upper tail. Incorporating ERC dynamics into intensity statistics may improve understanding and prediction of TC extremes.
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- PAR ID:
- 10645054
- Publisher / Repository:
- DOI PREFIX: 10.1029
- Date Published:
- Journal Name:
- Geophysical Research Letters
- Volume:
- 52
- Issue:
- 20
- ISSN:
- 0094-8276
- Format(s):
- Medium: X
- Sponsoring Org:
- National Science Foundation
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