Gianluca Filippa
United States Environmental Protection Agency
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Featured researches published by Gianluca Filippa.
Environmental Research Letters | 2013
Marta Galvagno; Georg Wohlfahrt; Edoardo Cremonese; Micol Rossini; Roberto Colombo; Gianluca Filippa; T. Julitta; Giovanni Manca; Consolata Siniscalco; U. Morra di Cella; Mirco Migliavacca
Changes in snow cover depth and duration predicted by climate change scenarios are expected to strongly affect high-altitude ecosystem processes. This study investigates the effect of an exceptionally short snow season on the phenology and carbon dioxide source/sink strength of a subalpine grassland. An earlier snowmelt of more than one month caused a considerable advancement (40 days) of the beginning of the carbon uptake period (CUP) and, together with a delayed establishment of the snow season in autumn, contributed to a two-month longer CUP. The combined effect of the shorter snow season and the extended CUP led to an increase of about 100% in annual carbon net uptake. Nevertheless, the unusual environmental conditions imposed by the early snowmelt led to changes in canopy structure and functioning, with a reduction of the carbon sequestration rate during the snow-free period.
International Journal of Biometeorology | 2015
Gianluca Filippa; Edoardo Cremonese; Marta Galvagno; Mirco Migliavacca; Umberto Morra di Cella; Martina Petey; Consolata Siniscalco
The increasingly important effect of climate change and extremes on alpine phenology highlights the need to establish accurate monitoring methods to track inter-annual variation (IAV) and long-term trends in plant phenology. We evaluated four different indices of phenological development (two for plant productivity, i.e., green biomass and leaf area index; two for plant greenness, i.e., greenness from visual inspection and from digital images) from a 5-year monitoring of ecosystem phenology, here defined as the seasonal development of the grassland canopy, in a subalpine grassland site (NW Alps). Our aim was to establish an effective observation strategy that enables the detection of shifts in grassland phenology in response to climate trends and meteorological extremes. The seasonal development of the vegetation at this site appears strongly controlled by snowmelt mostly in its first stages and to a lesser extent in the overall development trajectory. All indices were able to detect an anomalous beginning of the growing season in 2011 due to an exceptionally early snowmelt, whereas only some of them revealed a later beginning of the growing season in 2013 due to a late snowmelt. A method is developed to derive the number of samples that maximise the trade-off between sampling effort and accuracy in IAV detection in the context of long-term phenology monitoring programmes. Results show that spring phenology requires a smaller number of samples than autumn phenology to track a given target of IAV. Additionally, productivity indices (leaf area index and green biomass) have a higher sampling requirement than greenness derived from visual estimation and from the analysis of digital images. Of the latter two, the analysis of digital images stands out as the more effective, rapid and objective method to detect IAV in vegetation development.
International Journal of Biometeorology | 2017
Yann Vitasse; Martine Rebetez; Gianluca Filippa; Edoardo Cremonese; Geoffrey Klein; Christian Rixen
In alpine environments, the growing season is severely constrained by low temperature and snow. Here, we aim at determining the climatic factors that best explain the interannual variation in spring growth onset of alpine plants, and at examining whether photoperiod might limit their phenological response during exceptionally warm springs and early snowmelts. We analysed 17xa0years of data (1998–2014) from 35 automatic weather stations located in subalpine and alpine zones ranging from 1560 to 2450xa0m asl in the Swiss Alps. These stations are equipped with ultrasonic sensors for snow depth measurements that are also able to detect plant growth in spring and summer, giving a unique opportunity to analyse snow and climate effects on alpine plant phenology. Our analysis showed high phenological variation among years, with one exceptionally early and late spring, namely 2011 and 2013. Overall, the timing of snowmelt and the beginning of plant growth were tightly linked irrespective of the elevation of the station. Snowmelt date was the best predictor of plant growth onset with air temperature after snowmelt modulating the plants’ development rate. This multiple series of alpine plant phenology suggests that currently alpine plants are directly tracking climate change with no major photoperiod limitation.
Remote Sensing | 2018
Yunpeng Luo; Tarek S. El-Madany; Gianluca Filippa; Xuanlong Ma; Bernhard Ahrens; Arnaud Carrara; Rosario González-Cascón; Edoardo Cremonese; Marta Galvagno; Tiana W. Hammer; Javier Pacheco-Labrador; M. Pilar Martín; Gerardo Moreno; Oscar Pérez-Priego; Markus Reichstein; Andrew D. Richardson; Christine Römermann; Mirco Migliavacca
Tree–grass ecosystems are widely distributed. However, their phenology has not yet been fully characterized. The technique of repeated digital photographs for plant phenology monitoring (hereafter referred as PhenoCam) provide opportunities for long-term monitoring of plant phenology, and extracting phenological transition dates (PTDs, e.g., start of the growing season). Here, we aim to evaluate the utility of near-infrared-enabled PhenoCam for monitoring the phenology of structure (i.e., greenness) and physiology (i.e., gross primary productivity—GPP) at four tree–grass Mediterranean sites. We computed four vegetation indexes (VIs) from PhenoCams: (1) green chromatic coordinates (GCC), (2) normalized difference vegetation index (CamNDVI), (3) near-infrared reflectance of vegetation index (CamNIRv), and (4) ratio vegetation index (CamRVI). GPP is derived from eddy covariance flux tower measurement. Then, we extracted PTDs and their uncertainty from different VIs and GPP. The consistency between structural (VIs) and physiological (GPP) phenology was then evaluated. CamNIRv is best at representing the PTDs of GPP during the Green-up period, while CamNDVI is best during the Dry-down period. Moreover, CamNIRv outperforms the other VIs in tracking growing season length of GPP. In summary, the results show it is promising to track structural and physiology phenology of seasonally dry Mediterranean ecosystem using near-infrared-enabled PhenoCam. We suggest using multiple VIs to better represent the variation of GPP.
Biogeosciences | 2015
Lisa Wingate; Jérôme Ogée; Edoardo Cremonese; Gianluca Filippa; T. Mizunuma; Mirco Migliavacca; C. Moisy; M. Wilkinson; Christine Moureaux; Georg Wohlfahrt; Albin Hammerle; Lukas Hörtnagl; Cristina Gimeno; Albert Porcar-Castell; Marta Galvagno; T. Nakaji; James Morison; Olaf Kolle; Alexander Knohl; Werner L. Kutsch; Pasi Kolari; Eero Nikinmaa; Andreas Ibrom; B. Gielen; Werner Eugster; Manuela Balzarolo; D. Papale; Katja Klumpp; Barbara Köstner; Thomas Grünwald
Agricultural and Forest Meteorology | 2016
Gianluca Filippa; Edoardo Cremonese; Mirco Migliavacca; Marta Galvagno; Matthias Forkel; Lisa Wingate; Enrico Tomelleri; Umberto Morra di Cella; Andrew D. Richardson
Agricultural and Forest Meteorology | 2017
Yan Liu; Michael J. Hill; Zhuosen Wang; Andrew D. Richardson; Koen Hufkens; Gianluca Filippa; Dennis D. Baldocchi; Siyan Ma; Joseph Verfaillie; Crystal B. Schaaf
The Cryosphere | 2015
P. Pogliotti; Mauro Guglielmin; Edoardo Cremonese; U. Morra di Cella; Gianluca Filippa; Cécile Pellet; Christian Hauck
Agricultural and Forest Meteorology | 2017
Marta Galvagno; Georg Wohlfahrt; Edoardo Cremonese; Gianluca Filippa; Mirco Migliavacca; Umberto Mora di Cella; Eva van Gorsel
Agricultural and Forest Meteorology | 2018
Gianluca Filippa; Edoardo Cremonese; Mirco Migliavacca; Marta Galvagno; Oliver Sonnentag; Elyn R. Humphreys; Koen Hufkens; Youngryel Ryu; Joseph Verfaillie; Umberto Morra di Cella; Andrew D. Richardson