Interciencia
versión impresa ISSN 0378-1844
INCI v.28 n.3 Caracas mar. 2003
TIME-SPACE VARIATION IN THE CATCHABILITY COEFFICIENT AS A FUNCTION OF CATCH PER UNIT OF EFFORT IN Heterocarpus reedi (DECAPODA, PANDALIDAE) IN NORTH-CENTRAL CHILE
Eduardo P. Pérez E. and Omar Defeo
Eduardo P. Pérez E. M.Sc. CINVESTAV-IPN, Mérida, México. Professor, Departamento de Biología Marina, Facultad de Ciencias del Mar, Universidad Católica del Norte. Address: Casilla 117, Coquimbo, Chile. e-mail: eperez@ucn.cl
Omar Defeo. Ph.D., CINVESTAV-IPN, Mérida, México. Professor, Centro de Investigación y de Estudios Avanzados, Unidad Mérida, Yucatán, México. Address: A.P. 73 Cordemex C.P. 97310, Mérida, Yucatán, México. e-mail: odefeo@mda.cinvestav.mx
Summary
The catchability coefficient (q) is a key parameter in the validation process of a fishing simulation model. This parameter is generally assumed to be constant. However, in many cases this constancy is violated, especially in living marine resources with aggregated spatial distribution. The object of this study was to determine potential variations of q as a function of the catch per unit of effort (CPUE) of the shrimp Heterocarpus reedi in North-Central Chile. The variability of q was calculated weekly for three fishing seasons and two fishing zones, using the swept area method. The functional relationship between CPUE, in ton·km-2, and q was better explained by potential models. The analysis showed high variation in q between weeks in the same fishing season, an inverse relationship between CPUE and q, and an increase in the proportion of variance explained by the model as CPUE decreased.
Resumen
El coeficiente de capturabilidad (q) representa un parámetro clave en el proceso de validación de un modelo de simulación pesquera, proceso en el cual generalmente se le asume como constante. Sin embargo, en muchos casos este supuesto de constancia de q es violado, especialmente en recursos marinos vivos con distribución espacial agrupada. El principal objetivo de este trabajo fue determinar las posibles variaciones de q en función de la captura por unidad de esfuerzo (CPUE) en la pesquería del camarón nailon Heterocarpus reedi en la zona centro-norte de Chile. La variabilidad de q se calculó en forma semanal para tres temporadas y dos zonas de pesca por el método de área barrida, mientras que la relación funcional entre CPUE, en ton·km-2, y q estimado fue mejor explicada por un modelo potencial. El análisis realizado mostró: una alta variación de q entre semanas para una misma temporada de pesca; una relación inversa entre CPUE y q; y que la varianza explicada por el modelo aumentó a medida que la CPUE disminuyó.
Resumo
O coeficiente de capturabilidade (q) representa um parâmetro chave no processo de validação de um modelo de simulação pesqueira, processo no qual geralmente é asumido como constante. No entanto, em muitos casos este suposto de constância de q é violentado, especialmente em recursos marinhos vivos com distribuição espacial agrupada. O principal objetivo de este trabalho foi determinar as possíveis variações de q em função da captura por unidade de esforço (CPUE) na pescaria do camarão nailon Heterocarpus reedi na zona centro-norte do Chile. A variabilidade de q calculou-se em forma semanal para três temporadas e duas zonas de pesca pelo método de área varrida, enquanto que a relação funcional entre CPUE, em ton·km-2, e q estimado foi melhor explicada por um modelo potencial. A análise realizada mostrou: uma alta variação de q entre semanas para uma mesma temporada de pesca; uma relação inversa entre CPUE e q; e que a variação explicada pelo modelo aumentou a medida que a CPUE diminuiu.
Key words / Catchability / CPUE / Crustaceans / Heterocarpus reedi / Swept Area Method /
Received: 10/28/2002. Modified: 03/05/2003. Accepted: 03/10/2003
Introduction
The catchability coefficient (q) is a key parameter in the validation process of a fishing simulation model. In fact, catch per unit of effort (CPUEt) can be determined from an estimated biomass B in time t, which accounts for losses (catch and natural mortality) and gains (recruitment and individual weight) factors, as
CPUEt = Bt·q (1)
where it is assumed that q is constant over time, though this assumption is violated in fisheries associated to pelagic and demersal fish (MacCall, 1976; Peterman and Steer, 1981; Bannerot and Austin, 1983; Crecco and Savoy, 1985; Gordoa and Hightower, 1991; Swain and Sinclair, 1994; Swain et al., 2000), crustacean (Ye and Mohammed, 1999) and mollusk (Prince, 1992; Chávez, 2000) stocks. Reproductive aggregation (Arreguín-Sánchez, 1996), space-time variations in distribution (Ulltang, 1976; Peterman and Steer, 1981; Winters and Wheeler, 1985; Swain and Sinclair, 1994; Prince, 1992), changes in fishing power (Gulland, 1983), environmental factors (Hilborn y Walters, 1992; Swain et al., 2000) and effects related to fisherman behavior (Chávez, 2000) have been invoked as potential sources of variation. Thus, an increase in q as biomass decreases can lead to more rapid population extinction than would be predicted under the constant q assumption (MacCall, 1990; Pérez, 1996; Chávez, 2000).
A crustacean trawling fishery is carried out in Regions III and VIII of Chile (Figure 1), with 4863 tons of total landing in year 2001. The main target species are nylon shrimp (Heterocarpus reedi), yellow squat lobster (Cervimunida johni) and red squat lobster (Pleuroncodes monodon). Each of these species is subject to different access regimes. Between Regions II and VIII, H. reedi is declared as fully exploited. This is also the case for C. johni in Regions III and IV, whereas in southern Chile this species is managed with a catch quota license system. The fleet based in Coquimbo catches a significant volume of H. reedi in Region IV, whereas large landings of C. johni occur in Region III (Acuña et al., 1998, 1999).
Reliable estimates of q are crucial to formulate a fishery simulation model that allows objective prediction of species behavior under distinct exploitation strategies. The Secretary of Fisheries (Subsecretaría de Pesca) of Chile began recently efforts at quantifying q for this fishery because of potential uncertainties surrounding q and its possible behavior in space and time. The object of the present study was to determine space-time variations in q as a function of CPUE of H. reedi in North-Central Chile.
Materials and Methods
Information of landing of the trawler fleet based in the harbour of Coquimbo, in the Administrative Region IV (Figure 1) was used. This fleet operates mainly in the Administratrive Regions III and IV, but landings occur in Caldera and Huasco (Region III), Coquimbo and Los Vilos (Region IV).
In a joint effort with industrial fishers involved in this activity, records of catch and trawled time by haul for the fleet of Coquimbo were made aboard by technicians of the Universidad Católica del Norte (UCN). Although three species of crustacean are exploited by this fleet, H. reedi was the target species. The data base included data collected daily from September 1, 1997 to June 30, 2000. The data was used to determine catch per unit of effort (CPUE) by haul.
Spatial (k, Region) and temporal (t, week) variation of the catchability coefficient (qk,t) was independently calculated for Regions III and IV, according to the Baranov (1918) equation
where ak,t: area swept per fishing haul in zone k at time t, and Ak: stock distribution area in Region k (Subpesca, 2001). Thus, the measurement unit for q is haul-1. Caddy (1975) and Seijo et al. (1994) have suggested that this equation provides a good q estimate for fisheries like this. An implicit assumption in Eq. 2 is a probability of capture equal to 1. Estimation of q was done per fishing season from year 1997 to year 2000 (i.e. 97-98; 98-99 and 99-00), each running from 1 September to 30 June (Acuña et al., 1998).
The functional relationship between CPUEk,t and qk,t was fitted to a potential model, explicitly incorporating Eq. 2 according to Chávez (2000), as follows:
qk,t = aCPUEk,t-ß (3)
The pairs of qk,t and CPUEk,t represent average values generated with the central limit theorem (Zar, 1995). To obtain the mean distributions for qk,t and CPUEk,t, the bootstrap technique (Efron, 1981) was used, in which a sample size equivalent to 25% of the weekly observed fishing hauls was randomly chosen (including those with zero catch) each week. The mean was then calculated for this subsample, according to the information provided by 3000 bootstrap runs. Parameters a and ß of Eq. 3 were subject to analysis of covariance, ANCOVA (Zar, 1995), to evaluate within-Region differences between fishing seasons (treatments), using CPUE as the covariate. When significant differences between treatments were detected, the Tukey test (Zar, 1995) was applied.
Results
Both CPUE and q values for Regions III and IV exhibited high between-week variability (Figure 2), with an inverse relationship between them. This was particularly evident in Region III, fishing seasons 97-98 and 98-99, where CPUE markedly decreased from 8 ton·km-2, at the beginning of the first season, to 6 ton·km-2, at its end. An increase in q was also observed in this period, from 3·10-5 ·haul-1, at the beginning of the season, to 4.5·10-5·haul-1, at seasons end. The inverse correlation between both variables was more evident for fishing season 98-99, with CPUE declining to levels as low as 4 ton·km-2, and q increasing on average to ca. 5.5·10-5·haul-1. The values were more stable during the 98-00 season, with CPUE near to 4 ton·km-2, and q around 5·10-5·haul-1.
A similar pattern, though less evident, was observed for Region IV, with a sustained decrease in CPUE from the 97-98 season to the 99-00 season, accompanied by an increase in q (Figure 2). During this period, the CPUE declined from values greater than 4 ton·km-2, in the first season, to less than 3 ton·km-2, in the third season, while q increased from an initial value of ca. 4-5·10-5·haul-1 to approximately 6·10-5·haul-1.
In all cases, inverse relationships between CPUE and q were observed (Figure 3). Despite this, the regression model explained a low percentage of the variance, and at least in one fishing season (97-98, Region IV) this relationship was not significant (p>0.05).
Region III, during fishing season 98-99, had an evident inverse relationship between CPUE and q, in which the model explained 55% of variance and had the highest slope in comparison with the other seasons (Figure 3). During fishing season 99-00, which had stability in CPUE and q, the slope was lower (0.31) but still significant (R2=0.25, p<0.05), and the model explained 80% of variance. This inverse relationship between CPUE and q was also evident in Region IV (Figure 3), where a slope as percentage of variance explained by the model increased as CPUE decreased, changing from a low R2 and a slope not significantly different from zero in the first season (p>0.05), to a model explaining 66% of variance, with a slope of 0.56 (p<0.05) and the lowest CPUEs during the 99-00 fishing season.
ANCOVA revealed that the slope relating CPUE and q for Region III was significantly different between fishing seasons 97-98 and 98-99 (Tukey test: p<0.01), while between fishing seasons 98-99 and 99-00 there were no significant differences in terms of slope and intercept. For Region IV, the slope for the 97-98 season was statistically different from the other two (Tukey test: p<0.01), while for the 98-99 and 99-00 seasons, there were no significant differences in the slope (p=0.19) but in the intercept (p<0.01).
Discussion
Three main elements emerge from the results of this study, i.e: high between-week variation of q during the same season, an inverse relationship between CPUE and q, and an increase in the proportion of variance explained by the model as CPUE decreased. The high between-week variation of q within the same fishing season and the low, but significant, R2 for the relationship between CPUE and q, indicate that causes not contemplated in this study affect q estimates. Evidence exists of an inverse relationship between CPUE and q, especially for fish species with patchy distribution (MacCall, 1976; Ulltang, 1976; Peterman and Sterr, 1981; Csirke, 1989; Rose and Leggett, 1991; Arreguín-Sánchez, 1996).
When the stock is highly aggregated, the fishing method used is capable of removing a higher percentage of individuals with respect to the total population, causing q to increase. Potential sources of variation affecting q have been identified, such as temperature, distribution area, abundance and fishing effort, among others (MacCall, 1990; Hilborn and Walters, 1992, Arreguín-Sánchez, 1996). In the case of H. reedi, however, the results suggest that as CPUE decreases the explanatory power of Eq. 3 increases, which is more evident in Region IV. The degree of spatial heterogeneity in resource distribution could also explain this behavior. Patchy distribution, reflected in catch variability when trawling gears are used (Taylor, 1953), is a tentative explanation for the observed variation between weeks. Though each study Region has been contemplated as a continuous distribution band of H. reedi (Acuña et al., 1998, 1999, 2000), it seems reasonable that the stock occurs in patches with different distributions. This would be reflected in catch variation even when the area swept per fishing haul is the same within the different patches. In this case, the trade-off between effective trawl distance and resource distribution area will directly affect Eq. 2. A stock can be divided into different loci, each with different density. Each locus is considered as the smallest geographical unit, within which population density can be homogeneous (Caddy, 1975). Thus, spatial changes in abundance can affect the area trawled per fishing haul and effective area of distribution (Crecco and Overholtz, 1990), increasing q variability. As abundance decreases, these patches tend to become more homogeneous within them, producing greater homogeneity in q between weeks, as observed for fishing season 1999-2000 in Region III.
The decrease in CPUE for H. reedi did not generate noticeable changes in q. Variability in q has generally been addressed on an annual scale (see Gordoa and Hightower, 1991; Arreguín-Sánchez, 1996; Puga et al., 1996), though weekly changes in q have been reported by Atran and Loesch (1995) for Brevoortia tyrannus. These authors demonstrated that q could remain relatively constant when determined at an annual scale, but when the analysis is seasonally done, this assumption is generally violated. Significant weekly changes in q have been observed in the small-scale Mesodesma donacium bivalve fishery in Chile and were associated to density-dependent effects (Chávez, 2000). In this case, as a patch of M. donacium was depleted over a period of weeks, q increased due to the increase in the area swept by each dive to attain a catch amount that fulfills his economic expectations (Pérez, 1996; Chávez, 2000).
Another relevant aspect is the degree of synchronization between concurrent changes in q and relative abundance denoted by the CPUE. For example, during fishing season 97-98 in Region IV, observed CPUEs ranged between 2 and 8 ton·km-2. The slope was not different from zero, determining a lack of relationship between variables. In contrast, in fishing season 1999-2000 the correlation between variables was -0.80 (R2=0.64; p<0.05) for the same range of values. If a relationship between the variables exists, then it would always be expected to exist, especially if the same range of CPUE values is analyzed in different times. This was not the case, however, in Region IV for the fishing season 97-98. The most notable difference between both seasons was that the most frequently observed CPUEs in fishing season 99-00 were less than 4 ton·km-2, while in fishing season 97-98 they were higher than this value. A similar situation was seen in Region III. Given this, the change in the relationship between CPUE and q appears to be mediated by a certain catch threshold that accomplishes fishers expectations (Pérez, 1996; Chávez, 2000).
In summary, our results reinforce the view that CPUE can be considered an efficient abundance estimator if, and only if, the ß parameter of Eq. 3 is significantly lower than, and statistically different from, zero (Ulltang, 1976; Richards and Schnute, 1986; and Chávez, 2000). This is undoubtedly an important issue when validating any fisheries simulation model.
ACKNOWLEDGMENTS
This paper is part of the Doctoral Thesis of E.P. at CINVESTAV-IPN, Unidad Mérida, México. E.P. acknowledges financial support from Universidad Católica del Norte, Chile.
REFERENCES
1. Acuña E, Pérez EP, González MT (1998) Monitoreo de la pesquería de crustáceos realizada por la flota de la IV Región. Informe final. Facultad de Ciencias del Mar, Universidad Católica del Norte. Coquimbo, Chile. 104 pp. [ Links ]
2. Acuña E, Pérez EP, González MT (1999) Monitoreo de la pesquería de crustáceos realizada por la flota de la IV Región. Informe final. Facultad de Ciencias del Mar, Universidad Católica del Norte. Coquimbo, Chile. 80 pp. [ Links ]
3. Acuña E, Pérez EP, González, MT (2000). Monitoreo de la Pesquería de Crustáceos realizada por la flota de la IV región, 1999. Informe final. Facultad de Ciencias del Mar, Universidad Católica del Norte. Coquimbo, Chile. 76 pp. [ Links ]
4. Arreguín-Sánchez F (1996) Catchability: a key parameter for fish stock assessment. Rev. Fish Biol. Fisheries 6: 221-242. [ Links ]
5. Atran SM, Loesch JG (1995) An analysis of weekly fluctuations in catchability coefficients. Fish. Bull. 93: 562-567. [ Links ]
6. Bannerot SP, Austin CB (1983) Using frequency distribution of catch per unit of fishing effort to measure fish-stock abundance. Trans Am. Fish. Soc. 112: 608-617. [ Links ]
7. Baranov TY (1918) On the question of the biological basis of fisheries. Proc. Inst. Icht. Invest. 1: 81-128. [ Links ]
8. Caddy JF (1975) Spatial models for an exploited shellfish population, and its application to Georges Bank scallop fishery. J. Fish. Res. Board Can. 32: 1305-1328. [ Links ]
9. Crecco VA, Savoy TF (1985) Density-dependent catchability and its potential causes and consequences on Connecticut River American Shad, Alosa sapidissima. Can. J. Fish. Aquat. Sci. 42: 1649-1657. [ Links ]
10. Crecco VA, Overholtz W (1990) Causes of density-dependent catchability for Georges Bank haddock Melanogrammus aeglefinus. Can. J. Fish. Aquat. Sci. 47: 385-394. [ Links ]
11. Csirke J (1989) Changes in the catchability coefficient in the peruvian anchoveta (Engraulis ringens) fishery. In Pauly D, Muck P, Mendo J, Tsukayama I. (Eds.) The Peruvian upwelling ecosystem: dynamics and interactions. ICLARM Conf. Proc. 18, pp. 207-219. [ Links ]
12. Chávez J (2000) Análisis dinámico del coeficiente de capturabilidad y sus implicancias en la modelación de pesquerías: Mesodesma donacium en el banco de bahía Coquimbo, un estudio de caso. Tesis. Universidad Católica del Norte. Chile. 90 pp. [ Links ]
13. Efron B (1981) Nonparametric standard errors and confidence intervals. Can. J. Stats. 9: 139-172. [ Links ]
14. Gordoa A, Hightower JE (1991) Changes in catchability in a bottom-trawl fishery for Cape Hake (Merluccius capensis). Can. J. Fish. Aquat. Sci. 48: 1887-1895. [ Links ]
15. Gulland JA (1983) Fish Stock Assessment. A Manual for Basic Methods. John Wiley and Sons. New York. USA. 223 pp. [ Links ]
16. Hilborn RF, Walters CJ (1992) Quantitative fisheries stock assessment. Choice, dynamics and uncertainty. Chapman and Hall. New York. USA. 570 pp. [ Links ]
17. MacCall AD (1976) Density dependence of catchability coefficient in the California Pacific sardine, Sardinops sagax caerulea, purse seine fishery. Calif. Coop. Oceanic Fish. Invest. Rep. 18: 136-148. [ Links ]
18. MacCall AD (1990) Dynamic geography of marine fish populations. Books in recruitment fishery oceanography. Washington Sea Grant Program. Seattle. USA. 153 pp. [ Links ]
19. Pérez EP (1996) Análisis de la pesquería de Mesodesma donacium en el banco de Peñuelas (Chile, IV región), bajo condiciones de riesgo e incertidumbre. Tesis. CINVESTAV-IPN. Mérida, Yucatán. México. 82pp. [ Links ]
20. Peterman RM, Steer GJ (1981) Relation between sportfishing catchability coefficients and salmon abundance. Trans. Am. Fish. Soc. 114: 436-440. [ Links ]
21. Prince JD (1992) Using a spatial model to explore the dynamics of an exploited stock of the abalone Haliotis rubra. In Shepherd SA, Tegner MJ, Guzmán del Proo SA (Eds.) Abalone of the world. Biology, fisheries and culture. Proc. 1st Int. Symp. on Abalone. Fishing News Books. Cambridge Scientific Publications. Cambridge, UK. pp. 305-317. [ Links ]
22. Puga R, de León ME, Cruz R (1996) Catchability for the main methods in the cuban fishery of the spiny lobster Panulirus argus (Latreille, 1804), and implications for management (Decapoda: Palinuridae). Crustaceana 69: 703-718. [ Links ]
23. Richards LJ, Schnute JT (1986) An experimental and statistical approach to the question: Is CPUE an index of abundance? Can. J. Fish. Aquat. Sci. 43: 1214-1227. [ Links ]
24. Rose GA, Leggett WC (1991) Effects of biomass-range interactions on catchability of migratory demersal fish by mobile fisheries: an example of Atlantic cod (Gadus morhua). Can. J. Fish. Aquat. Sci. 48: 843-848. [ Links ]
25. Seijo JC, Caddy JF, Euán J (1994) SPATIAL: space-time dynamics in marine fisheries. A software package for sedentary species. FAO. Comp. Inf. Ser. Fish. (6). 116 pp. [ Links ]
26. Subpesca (2001) Evaluación directa del recurso camarón nailon entre la II y VIII Región. Versión preliminar. Doc. Interno. 10 pp. [ Links ]
27. Swain DP, Sinclair AF (1994) Fish distribution and catchability: what is the appropiate measure of distribition? Can. J. Fish. Aquat. Sci. 51: 1046-1054. [ Links ]
28. Swain DP, Poirier GA, Sinclair AF (2000) Effect of water temperature on catchability of Atlantic cod (Gadus morhua) to the bottom-trawl survey in the southern Gulf of St Lawrence. ICES J. Mar. Sci. 57: 56-68. [ Links ]
29. Taylor CC (1953) Nature of variability in trawl catches. Fishery Bulletin of the Fish and Wildlife Service. Fish. Bull. 83: 143-154. [ Links ]
30. Ulltang Ø (1976) Catch per unit of effort in the Norwegian purse seine fishery for Atlanto-Scandinavian herring. FAO Fish. Tech. Pap. 155: 91-101. [ Links ]
31. Winters GH, Wheeler JP (1985) Interaction between stock area, stock abundance, and catchability coefficient. Can. J. Fish. Aquat. Sci. 42: 989-998. [ Links ]
32. Ye Y, Mohammed H (1999) An analysis of variation in catchability of green tiger prawn, Penaeus semisulcatus in waters off Kuwait. Fish. Bull. 97: 702-712. [ Links ]
33. Zar J (1995) Biostatistical analysis. 3rd ed. Prentice-Hall, New Jersey. USA. 718 pp. [ Links ]